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GB2605227A - Doppler radar flock detection systems and methods - Google Patents

Doppler radar flock detection systems and methods Download PDF

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Publication number
GB2605227A
GB2605227A GB2115454.7A GB202115454A GB2605227A GB 2605227 A GB2605227 A GB 2605227A GB 202115454 A GB202115454 A GB 202115454A GB 2605227 A GB2605227 A GB 2605227A
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United Kingdom
Prior art keywords
radar
determining
velocity spectrum
sensor
assembly
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Pending
Application number
GB2115454.7A
Other versions
GB202115454D0 (en
Inventor
Stokes Paul
James Jales Richard
Lester St Hill Nicholas
Aston Philippe
Murphy Adam
Johnson Mark
C Rivers Mark
A A Stewart Peter
S Chittenden Paul
Bonfield Thomas
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Flir Belgium BVBA
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Flir Belgium BVBA
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Filing date
Publication date
Priority claimed from US17/510,317 external-priority patent/US20220043112A1/en
Application filed by Flir Belgium BVBA filed Critical Flir Belgium BVBA
Publication of GB202115454D0 publication Critical patent/GB202115454D0/en
Publication of GB2605227A publication Critical patent/GB2605227A/en
Pending legal-status Critical Current

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Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S7/00Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
    • G01S7/02Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
    • G01S7/41Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00 using analysis of echo signal for target characterisation; Target signature; Target cross-section
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S7/00Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
    • G01S7/02Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
    • G01S7/41Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00 using analysis of echo signal for target characterisation; Target signature; Target cross-section
    • G01S7/415Identification of targets based on measurements of movement associated with the target
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S13/00Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
    • G01S13/02Systems using reflection of radio waves, e.g. primary radar systems; Analogous systems
    • G01S13/50Systems of measurement based on relative movement of target
    • G01S13/52Discriminating between fixed and moving objects or between objects moving at different speeds
    • G01S13/522Discriminating between fixed and moving objects or between objects moving at different speeds using transmissions of interrupted pulse modulated waves
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S13/00Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
    • G01S13/02Systems using reflection of radio waves, e.g. primary radar systems; Analogous systems
    • G01S13/50Systems of measurement based on relative movement of target
    • G01S13/58Velocity or trajectory determination systems; Sense-of-movement determination systems
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S13/00Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
    • G01S13/02Systems using reflection of radio waves, e.g. primary radar systems; Analogous systems
    • G01S13/50Systems of measurement based on relative movement of target
    • G01S13/58Velocity or trajectory determination systems; Sense-of-movement determination systems
    • G01S13/581Velocity or trajectory determination systems; Sense-of-movement determination systems using transmission of interrupted pulse modulated waves and based upon the Doppler effect resulting from movement of targets
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S13/00Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
    • G01S13/88Radar or analogous systems specially adapted for specific applications
    • G01S13/93Radar or analogous systems specially adapted for specific applications for anti-collision purposes
    • G01S13/937Radar or analogous systems specially adapted for specific applications for anti-collision purposes of marine craft
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S7/00Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
    • G01S7/02Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
    • G01S7/04Display arrangements
    • G01S7/06Cathode-ray tube displays or other two dimensional or three-dimensional displays
    • G01S7/10Providing two-dimensional and co-ordinated display of distance and direction
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S7/00Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
    • G01S7/02Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00
    • G01S7/41Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00 using analysis of echo signal for target characterisation; Target signature; Target cross-section
    • G01S7/417Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S13/00 using analysis of echo signal for target characterisation; Target signature; Target cross-section involving the use of neural networks
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01SRADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
    • G01S7/00Details of systems according to groups G01S13/00, G01S15/00, G01S17/00
    • G01S7/48Details of systems according to groups G01S13/00, G01S15/00, G01S17/00 of systems according to group G01S17/00
    • G01S7/491Details of non-pulse systems
    • G01S7/493Extracting wanted echo signals

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  • Engineering & Computer Science (AREA)
  • Radar, Positioning & Navigation (AREA)
  • Remote Sensing (AREA)
  • Physics & Mathematics (AREA)
  • Computer Networks & Wireless Communication (AREA)
  • General Physics & Mathematics (AREA)
  • Ocean & Marine Engineering (AREA)
  • Electromagnetism (AREA)
  • Artificial Intelligence (AREA)
  • Evolutionary Computation (AREA)
  • Radar Systems Or Details Thereof (AREA)

Abstract

Systems and methods to provide wildlife feeding flock detection using a remote sensing imagery system. The system 100 includes a radar 160 assembly mounted to a mobile structure 101 and a coupled logic device. The logic device is configured to receive radar returns corresponding to a detected target, determine a radial velocity spectrum associated with the detected target based, at least in part, on the received radar returns. The process determining a probability the detected target includes a feeding flock based, at least in part, on the determined radial velocity spectrum. The logic device generates radar image data based on the received radar returns, the determined radial velocity spectrum, and/or the probability the detected target includes the feeding flock. Determining the radial velocity spectrum preferably involves determining a centroid range and centroid azimuth relative to the radar assembly and determining an azimuth segmented velocity spectrum and a range segmented velocity spectrum. The determination of the probability the target comprises a feeding flock preferably comprises determining a breadth, differentiation, mean, standard deviation and/or skewness of an azimuth segmented velocity spectrum and/or the range segmented velocity spectrum.

Description

DOPPLER RADAR FLOCK DETECTION SYSTEMS AND METHODS
TECHNICAL FIELD
One or more embodiments of the invention relate generally to remote sensing systems and more particularly, for example, to systems and methods for identifying avian Rocks feeding on marine wildlife.
BACKGROUND
Remote sensing systems, such as radar, sonar, &tar, and/or other ranging sensory 1 0 systems, are often used to assist in navigation by producing data and/or imagery of the environment surrounding a mobile structure, such as imagery representing above-surface and/or subsurface features critical to navigation of a watercraft over a body of water. Conventional remote sensing systems often include a display configured to provide traditionally recognizable remote sensing imagery to a user.
1 5 Remote sensing data and resulting imagery, and particularly data comprising aggregations of remote sensor returns received over time, is often difficult to interpret reliably. At the same time, consumer market pressures and convenience dictate easier to use systems that are inexpensive and that produce high quality and reliable data and/or that require high precision remote sensing data to provide accurate, precise, and reliable 2 0 situational awareness about a vessel, including imagery derived from such remote sensing data. Thus, there is a need for an improved methodology to provide highly accurate and intuitive remote sensing systems, particularly in the context of providing systems configured to produce reliable remote sensing data and/or imagery important to general operation of a mobile structure, including watercraft.
SUMMARY
Techniques are disclosed for systems and methods to provide wildlife (e.g., avian) feeding flock detection using a remote sensing imagery system. A remote sensing imagery system may include radar assemblies, colocated imaging modules, other remote sensing assemblies, and logic devices in communication with the various assemblies. Each remote sensing assembly may be adapted to be mounted to a mobile structure, and each remote sensing imagery system may include and/or be communicatively coupled to an orientation and/or position sensor (OPS). The logic devices may be configured to receive sensor data and generate imagery based on the sensor data. Subsequent user input and/or the sensor data may be used to adjust a steering actuator, a propulsion system thrust, and/or other operational systems of the mobile structure.
In various embodiments, remote sensing imagery system may include one or more orientation sensors, position sensors, gyroscopes, accelerometers, global navigation satellite system (GNSS) receivers, and/or additional sensors, actuators, controllers, user interfaces, mapping systems, and/or other modules mounted to or in proximity to a vehicle. Each component of the system may be implemented with a logic device adapted to form one or more wired and/or wireless communication links for transmitting and/or receiving sensor signals, control signals, or other signals and/or data between the various components.
In one embodiment, a system may include a radar assembly mounted to a mobile structure and a coupled logic device. The logic device may be configured to receive radar returns corresponding to a detected target from the radar assembly, determine a radial velocity spectrum associated with the detected target based, at least in part, on the received radar returns, determine a probability the detected target includes a feeding flock based, at least in part, on the determined radial velocity spectrum, and generate radar image data based at least in part, the received radar returns, the determined radial velocity spectrum, and/or the 2 0 determined probability the detected target comprises the feeding flock.
In another embodiment, a method may include receiving radar returns corresponding to a detected target from a radar assembly configured to be mounted to a mobile structure; determining a radial velocity spectrum associated with the detected target based, at least in part, on the received radar returns; determining a probability the detected target comprises a 2 5 feeding flock based, at least in part, on the determined radial velocity spectrum; and generating radar image data based, at least in part, on the received radar returns, the determined radial velocity spectrum, and/or the determined probability the detected target comprises the feeding flock.
BRIEF DESCRIPTION OF THE DRAWINGS
Fig. IA illustrates a block diagram of a remote sensing imagery system in accordance
with an embodiment of the disclosure. -2 -
Fig. 1B illustrates a diagram of a remote sensing imagery system in accordance with an embodiment of the disclosure.
Fig. 2 illustrates a diagram of a remote sensing imagery system in accordance with an embodiment of the disclosure.
Fig. 3A illustrates a diagram of a remote sensing imagery system in accordance with
an embodiment of the disclosure.
Fig. 3B illustrates a diagram of a remote sensing imagery system in accordance with an embodiment of the disclosure.
Fig. 3C illustrates a diagram of a remote sensing imagery system in accordance with
an embodiment of the disclosure.
Fig. 3D illustrates a diagram of an imaging system colocated within a remote sensing assembly for a remote sensing imagery system in accordance with an embodiment of the disclosure.
Fig. 4A illustrates a diagram of a remote sensing imagery system in accordance with
an embodiment of the disclosure.
Fig. 4B illustrates a graph of typical yaw rates experienced by a remote sensing imagery system in accordance with an embodiment of the disclosure.
Fig. 4C illustrates a diagram showing a technique to determine a radial velocity for a remote sensing imagery system in accordance with an embodiment of the disclosure.
Figs. 4D-E illustrate display views generated by a remote sensing imagery system in
accordance with an embodiment of the disclosure.
Fig. 5 illustrates a flow diagram of various operations to operate a remote sensing imagery system in accordance with an embodiment of the disclosure.
Figs. 6A-F illustrate display views generated by a remote sensing imagery system in 2 5 accordance with an embodiment of the disclosure.
Fig. 7 illustrates an angle sensor for a remote sensing imagery system in accordance with an embodiment of the disclosure.
Figs. SA-B illustrate graphs of remote sensor beam characteristics and corresponding -3 -interactions with wildlife feeding flocks in accordance with embodiments of the disclosure.
Figs. 9A-D illustrate display views generated by a remote sensing imagery system receiving radar returns associated with a wildlife feeding flock, where the azimuthal cross section of the feeding flock is narrower than a corresponding emitted remote sensor beam width, in accordance with an embodiment of the disclosure.
Figs. 10A-D illustrate display views generated by a remote sensing imagery system receiving radar returns associated with a wildlife feeding flock, where the azimuthal cross section of the feeding flock is wider than a corresponding emitted remote sensor beam width, in accordance with an embodiment of the disclosure.
Figs. 11A-D illustrate display views generated by a remote sensing imagery system receiving radar returns associated with a wildlife feeding flock consisting of a single target or flock element, in accordance with an embodiment of the disclosure.
Figs. 12A-B illustrate display views generated by a remote sensing imagery system and including identified wildlife feeding flocks, in accordance with an embodiment of the 15 disclosure.
Fig. 13 illustrates a flow diagram of various operations to perform wildlife feeding flock detection in accordance with an embodiment of the disclosure.
Embodiments of the invention and their advantages are best understood by referring to the detailed description that follows. It should be appreciated that like reference numerals are used to identify like elements illustrated in one or more of the figures.
DETAILED DESCRIPTION
In accordance with various embodiments of the present disclosure, wildlife feeding flock detection may be provided by a remote sensing system (e.g., a radar and/or sonar system) configured to detect circulation within a wildlife flock that is indicative of feeding flocks (e.g., as opposed to migratory flocks). Such remote sensing system may be implemented as a Doppler-capable radar system or other remote sensing system capable of detecting radial velocities (e.g., along the emission path of a corresponding remote sensor beam) associated with the feeding flock.
In various embodiments, such remote sensing system may include one or more remote sensing assemblies, orientation sensors, gyroscopes, accelerometers, position sensors, speed -4 -sensors, and/or an imaging system colocated within a remote sensing assembly providing measurements of an orientation, a position, an acceleration, and/or a speed of the remote sensing assemblies and/or a coupled mobile structure, for example, and corresponding image data captured by the colocated imaging system. For example, the various sensors may be mounted to or within the mobile structure (e.g., a watercraft, aircraft., motor vehicle, and/or other mobile structure), or may be integrated with the remote sensing assemblies, as described herein.
Embodiments of the present disclosure produce remote sensing imagery that is easily calibrated and relatively inexpensive to implement, thereby providing remote sensing imagery that is highly accurate and more accessible to consumers than conventional systems and/or methods.
For example, radar technology can provide significant information about a surrounding environment but generally relies on an experienced operator to interpret the information to identify what exactly a target or targets are. Overlay of maps provide support for the interpretation but often fail to identify non-stationary objects, including wildlife feeding flocks. Doppler technology has reduced this issue by reliably identifying real-world objects that are approaching or receding. Embodiments described herein combine optical image data and radar data to provide a significant improvement in the ability to interpret the information. By colocating an imaging system with a radar antenna and rotating it with the radar assembly, the data is coincident and can have the same angular coverage. An operator is provided with a greater level of information in a format that is relatively clear, concise, and intuitive, even for novices. Embodiments include methods of automatically detecting and identifying targets and methods of displaying manipulating the combined information intuitively.
2 5 Doppler radars are becoming more available due to improvements in the cost and availability of the radar technology on which they depend. A desired objective is to provide situational awareness of the bodies/sensor targets in motion about a piloted mobile structure, including wildlife feeding flocks. Mechanically scanned radar systems move the radar antenna relative to a vessel on which the radar scanner is located by mechanical means such as a motor or actuator. A radar Doppler signal may be detected as a change of phase or frequency between a transmitted signal and corresponding received reflected radar signal -5 -Such Doppler signal is dependent on the relative motion of a radar target and the vessel on which the radar is mounted. Determining the radar target's motion relative to a fixed or moving coordinate frame, for example relative to the earth's surface (an inertial frame of reference), may involve a vector subtraction of the antenna's orientation and velocity in that same frame of reference.
Conventional systems determine a radar antenna's orientation relative to the vessel to which it is mounted, (in azimuth ancUor elevation), and then to use remote (to the antenna) vessel sensors to measure the vessel's velocity and orientation relative to a selected frame of reference. Vector subtractions and additions are then used to compute a target's velocity relative to that inertial frame of reference. Enors and asynchronicity of the vessel's sensors add undesirable noise and uncertainty to the Doppler determined velocity of radar targets relative to the inertial frame. Embodiments described herein remove or at least significantly limit such errors by employing a direct measurement methodology involving mounting an inertial measurement unit (IMU) on the remote sensor antenna itself. The IMU moves with the antenna and measures the antennas orientation and velocity directly relative to the inertial frame of reference. Embodiments employ a global navigation satellite system (GNSS) compass to help reduce the cost of the IMU by periodically correcting for bias and drift common in relatively inexpensive IMUs.
As described herein, only a relative radial velocity can be measured directly using the Doppler signal. A target's tangential motion (relative to the remote sensor system) does not give rise to a Doppler signal. The tangential velocity of the target typically must be determined by other methods, such as by target tracking, where the target's relative position is measured over a time interval and the target's relative velocity, including the tangential component of that velocity, is determined based on the positions over the time interval. The 2 5 advantage of using the Doppler signal, over target tracking, is that Doppler measurements provide instantaneous measurements of the relative radial component of the target's velocity, and they do so to a greater accuracy than that achievable by change of range or bearing determined by target tracking alone. The two techniques may be used together; the Doppler signal may be used to identify targets which have sufficient velocity (e.g., towards the remote sensor system) to be worth tracking. For example, targets which exceed a given radial velocity may be highlighted when displayed to a user, such as red for approaching and green for receding targets. Embodiments may remove the effect of the system's own motion and -6 -highlight only targets which are approaching or receding from the system at a Oven speed over ground (e.g., 3 to 5 Knots).
Embodiments of the present disclosure calculate the radial Speed Over Ground (SOG) of radar targets by measuring their Doppler velocity (e.g., the relative speed along a vector linking the system to the detected target). The radar's antenna rotates, relative to the mobile structure to which it is mounted, and at any time is pointing in a known or derivable direction relative to the mobile structure. A vector subtraction may be performed to remove the effect of the remote sensor system's motion from the target's calculated Doppler velocity, to produce the target's radial speed over ground (e.g., absolute speed measured along the vector linking the system to the detected target). By mounting the IMU on the antenna platform of the remote sensor system itself, the IMU moves with the antenna and measures the antennas orientation and velocity directly relative to the inertial frame of reference. An antenna's radial velocity relative to ground may be obtained from the Course Over Ground (COG) of the remote sensor system, the instantaneous antenna bearing, and the remote sensor system's SOG, as described herein.
The benefit of a direct measurement of the antenna's motion, rather than using a vessel's sensors and shaft encoders is that the accumulated errors due to sensor data latency and sensor accuracy can be eliminated or at least significantly reduced. Embodiments described herein use such relatively precise remote sensor data to obtain enhanced accuracy of a target's velocity or velocity spectrum (e.g., where a target has multiple separately moving portions -such as a bow turning towards the remote sensor system and a stern turning away from the remote sensor system). Such velocity spectrums or distributions are helpful for target classification and differentiation.
In various embodiments, a remote sensing imagery system according to the present disclosure may include a remote sensing system with one or more orientation and/or position sensors (OPSs) configured to provide orientation data and position data (e.g., through use of GPS, GLONASS, Galileo, COMPASS, IRNSS, and/or other global navigation satellite systems (GNSSs)). In such embodiments, the remote sensing imagery system may be configured to determine the track, course over ground (COG), and/or speed over ground (SOG) of the remote sensing system and/or the coupled mobile structure from the position data provided by the OPS. Corresponding headings (e.g., referenced to True North, for -7 -example) may be detemdned from the track, COG, and/or SOG, and the effects of wind and tide can be estimated and displayed or removed from the heading. Set and drift (e.g., due to tide) and leeway (e.g., due to wind) errors may be compensated for because the data provided by the OPS can be referenced to an absolute coordinate frame Embodiments described herein may employ a novel implementation of a GNSS + Gyro compass (orientation sensor) that uses relatively inexpensive GNSS receivers and microelectromechanical system (M EMS) gyros/accelerometers and an embedded processor to provide a relatively fast, accurate compass that does not require the use of a magnetometer or other mechanism to sense the Earth's magnetic field. For example, the orientation of a remote 1 0 sensor system, a vehicle, aircraft, or vessel relative to the Earth is desirable for many applications including remote sensor imaging, ranging, and relative speed determinations.
Magnetic compasses sense the orientation of the Earth's magnetic field, and they can suffer from several known problems: variation, deviation, and alignment (lubber line alignment). In addition, a magnetic compass needs to reject the effect of the vertical component of the Earth's magnetic field (dip angle), and this is attempted by floating the compass in oil so that the compass needle is kept reasonably horizontal. However, dining turns, a centripetal acceleration lilts the compass, and the vertical component is typically not completely rejected (e.g., the Northerly Turning Error (NTE)). Electronic compasses can use a similar arrangement but still suffer from NTE or use a 3D magnetometer and attempt to 2 0 resolve the horizontal component of the magnetic field. However, in order to do so with precision, the local horizontal plane (relative to gravity) still needs to be determined, including during a turn. A combination of 3D gyros and 3D accelerometers may be used with a 3D magnetometer to form an Attitude and Heading Reference Sensor (AHRS), but AHRSs that use such magnetometers still suffer from Deviation, Variation and Alignment errors, as 2 5 described herein.
A conventional GNSS compass may be used to reduce the influence of such errors, but in highly dynamic environments, a conventional GNSS compass's update rate (typically 10Hz) is inadequate to keep pace with the needs of a remote sensor system, which may be performing full 360 degree sweeps about a vessel 24 or more times a minute (once every -1-2 seconds). Embodiments described herein employ a GNSS and an IMU, where the GNSS compass is used to correct bias and gain errors (e.g., accumulation errors) typical of an -8 -inexpensive 3D IMU to provide a fast aml accurate compass that does not require the use of a magnetometer or to sense the earth's magnetic field, and thereby is relatively impervious to error associated with such magnetic measurements.
On occasions the GNSS signal will be denied due to obstructions or interference.
Embodiments can receive a magnetic heading from an AHRS or electronic compass mounted elsewhere on a vessel, as a fallback, though such sensors will often be subject to reduced accuracy as discussed above. Embodiments can also receive signals from a shaft encoder or other relative angle sensor integrated with the remote sensor system that provides information on the orientation of the antenna relative to a reference direction, typically an estimate of the longitudinal axis of the vessel to which it is attached, and thus compute the vessel's heading for creation of a Head-Up radar image, for example, or for the use of other equipment on the vessel such as an autopilot. GNSS sensors on an axis of rotation for the remote sensor system can provide information on a vessel's course, should the vessel's course and heading differ for example under the influence of tide or wind. The vessel's course can be used to provide a 1 5 Course-Up radar image. In the event of denial of the GNSS signal the radar image may fall back to a Head-Up image, as described herein.
Fig. lA illustrates a block diagram of remote sensing imagery system 100 in accordance with an embodiment of the disclosure. In various embodiments, system 100 may be adapted to measure an orientation, a position, an acceleration, and/or a speed of sonar system 110, radar system 160, user interface 120, and/or mobile structure 101 using any of the various sensors of OPS 190 and/or system 101. System 100 may then use these measurements to generate accurate image data from sonar data provided by sonar system 1 1 0 and/or radar data provided by radar system 160 according to a desired operation of system 100 and/or mobile structure 101. In some embodiments, system 100 may display resulting 2 5 imagery to a user through user interface 120, and/or use the sonar data, radar data, orientation and/or sensor data, and/or imagery to control operation of mobile structure 101, such as controlling steering actuator 150 and/or propulsion system 170 to steer mobile structure 101 according to a desired heading, such as heading angle 107, for example.
In the embodiment shown in Fig. 1A, system 100 may be implemented to provide radar data and/or imagery for a particular type of mobile structure 101, such as a drone, a watercraft, an aircraft, a robot, a vehicle, and/or other types of mobile structures, including -9 -any platform designed to move through or under the water, through the air, and/or on a terrestrial surface. In one embodiment, system 100 may include one or more of a sonar system 110, a radar system 160, a user interface 120, a controller 130, an OPS 190 (e.g., including an orientation sensor 140, a gyroscope/ accelerometer 144, and/or a global navigation satellite system (GNSS) 146), a speed sensor 142, a steering sensor/actuator 150, a propulsion system 170, and one or more other sensors and/or actuators, such as other modules 180. In some embodiments, one or more of the elements of system 100 may be implemented in a combined housing or structure that can be coupled to mobile structure 101 and/or held or carried by a user of mobile structure 101.
Directions 102, 103, and 104 describe one possible coordinate frame of mobile structure 101 (e.g., for headings or orientations measured by orientation sensor 140 and/or angular velocities and accelerations measured by gyroscope 144 and accelerometer 145). As shown in Fig. 1A, direction 102 illustrates a direction that may be substantially parallel to and/or aligned with a longitudinal axis of mobile structure 101, direction 103 illustrates a direction that may be substantially parallel to and/or aligned with a lateral axis of mobile structure 101, and direction 104 illustrates a direction that may be substantially parallel to and/or aligned with a vertical axis of mobile structure 101, as described herein. For example, a roll component of motion of mobile structure 101 may correspond to rotations around direction 102, a pitch component may correspond to rotations around direction 103, and a yaw component may correspond to rotations around direction 104.
Heading angle 107 may correspond to the angle between a projection of a reference direction 106 (e.g., the local component of the Earth's magnetic field) onto a horizontal plane (e.g., referenced to a gravitationally defined -down" vector local to mobile structure 101) and a projection of direction 102 onto the same horizontal plane. In some embodiments, the projection of reference direction 106 onto a horizontal plane (e.g., referenced to a gravitationally defined "down" vector) may be referred to as Magnetic North. In various embodiments, Magnetic North, True North, a "down" vector, and/or various other directions, positions, and/or fixed or relative reference frames may define an absolute coordinate frame, for example, where directional measurements referenced to an absolute coordinate frame may be referred to as absolute directional measurements (e.g., an "absolute" orientation). In some embodiments, directional measurements may initially be referenced to a coordinate frame of a particular sensor (e.g., a sonar transducer assembly or other module of sonar system 110, OPS -10 - 190, orientation sensor 140, and/or user interface 120, for example) and be transformed (e.g., using parameters for one or more coordinate frame transformations) to be referenced to an absolute coordinate frame and/or a coordinate frame of mobile structure 101. In various embodiments, an absolute coordinate frame may be defined and/or correspond to a coordinate frame with one or more undefined axes, such as a horizontal plane local to mobile structure 101 and referenced to a local gravitational vector but with an unreferenced and/or undefined yaw reference (e.g., no reference to Magnetic North).
Sonar system 110 may be implemented as one or more electrically and/or mechanically coupled controllers, transmitters, receivers, transceivers, signal processing logic devices, various electrical components, transducer elements of various shapes and sizes, multichannel transducers/transducer modules, transducer assemblies, assembly brackets, transom brackets, and/or various actuators adapted to adjust orientations of any of the components of sonar system 110, as described herein.
For example, in various embodiments, sonar system 110 may be implemented and/or operated according to any of the systems and methods described in U.S. Provisional Patent Application 62/005,838 filed May 30, 2014 and entitled -MULTICHANNEL SONAR SYSTEMS AND METHODS", and/or U.S. Provisional Patent Application 61/943,170 filed February 21, 2014 and entitled "MODULAR SONAR TRANSDUCER ASSEMBLY SYSTEMS AND METHODS". In other embodiments, sonar system 110 may be implemented according to other sonar system arrangements (e.g., remote sensing system arrangements) that can be used to detect objects within a water column and/or a floor of a body of water.
More generally, sonar system 110 may be configured to emit one, multiple, or a series of acoustic beams (e.g., remote sensor beams), receive corresponding acoustic returns (e.g., 2 5 remote sensor returns), and convert the acoustic returns into sonar data and/or imagery (e.g., remote sensor image data), such as bathymetric data, water depth, water temperature, water column/volume debris, bottom profile, and/or other types of sonar data. Sonar system 110 may be configured to provide such data and/or imagery to user interface 120 for display to a user, for example, or to controller 130 for additional processing, as described herein.
In some embodiments, sonar system 110 may be implemented using a compact design, where multiple sonar transducers, sensors, and/or associated processing devices are located within a single transducer assembly housing that is configured to interface with the rest of system 100 through a single cable providing both power and communications to and from sonar system 110. In some embodiments, sonar system 110 may include orientation and/or position sensors configured to help provide two or three-dimensional waypoints, increase sonar data and/or imagery quality, and/or provide highly accurate bathymetry data as described herein.
For example, fisherman desire highly detailed and accurate information and/or imagery of underwater structure and mid water targets (e.g., fish). Conventional sonar systems can be expensive and bulky and typically cannot be used to provide relatively 1 0 accurate and/or distortion free underwater views, as described herein. Embodiments of sonar system I I() include low cost single, dual, and/or multichannel sonar systems that can be configured to produce detailed two and three-dimensional sonar data and/or imagery. In some embodiments, sonar system I 10 may consolidate electronics and transducers into a single waterproof package to reduce size and costs, for example, and may be implemented with a single connection to other devices of system 100 (e.g., via an Ethernet cable with power over Ethernet, an integral power cable, and/or other communication and/or power transmission conduits integrated into a single interface cable).
In various embodiments, sonar system 110 may be configured to provide many different display views from a variety of selectable perspectives, including down imaging, 2 0 side imaging, and/or three-dimensional imaging, using a selection of configurations and/or processing methods, as described herein. In some embodiments, sonar system I 10 may be implemented with a single transducer assembly housing incorporating one or two transducers and/or associated electronics. In other embodiments, sonar system 110 may be implemented with a transducer assembly housing incorporating a multichannel transducer and/or associated electronics. In such embodiments, sonar system 110 may be configured to transmit acoustic beams using a transmission channel and/or element of a multichannel transducer, receive acoustic returns using multiple receive channels and/or elements of the multichannel transducer, and to perfoim beamforming and/or interferometry processing on the acoustic returns to produce two and/or three-dimensional sonar imagery. In some embodiments, one or more sonar transmitters of sonar system 110 may be configured to use CHIRP transmissions to improve range resolution and hence reduce ambiguities typically inherent in interferometry processing techniques.
-12 -Jr various embodiments, sonar system 110 may be implemented with its own dedicated OPS 190, which may include various orientation and/or position sensors (e.g., similar to orientation sensor 140, gyroscope/accelerometer 144, and/or GNSS 146) that may be incorporated within the transducer assembly housing to provide three dimensional orientations and/or positions of the transducer assembly and/or transducer(s) for use when processing or post processing sonar data for display. The sensor information can be used to correct for movement of the transducer assembly between ensonifications to provide improved alignment of corresponding acoustic returns/samples, for example, and/or to generate imagery based on the measured orientations and/or positions of the transducer assembly. In other embodiments, an external orientation and/or position sensor can he used alone or in combination with an integrated sensor or sensors.
In embodiments where sonar system 110 is implemented with a position sensor, sonar system 110 may be configured to provide a variety of sonar data and/or imagery enhancements. For example, sonar system 110 may be configured to provide accurate positioning of sonar data and/or user-defined waypoints remote from mobile system 101.
Similarly, sonar system 110 may be configured to provide accurate two and/or three-dimensional aggregation and/or display of a series of sonar data; without position data, a sonar system typically assumes a straight track, which can cause image artifacts and/or other inaccuracies in corresponding sonar data and/or imagery. Additionally, when implemented 2 0 with a position sensor and/or interfaced with a remote but relatively fixed position sensor (e.g., GNSS 146), sonar system 110 may be configured to generate accurate and detailed bathymetric views of a floor of a body of water.
In embodiments where sonar system 110 is implemented with an orientation and/or position sensor, sonar system 110 may be configured to store such location/position 2 5 information along with other sensor information (acoustic returns, temperature measurements, text descriptions, water depth, altitude, mobile structure speed, and/or other sensor and/or control information) available to system 100. In some embodiments, controller 130 may be configured to generate a look up table so that a user can select desired configurations of sonar system 110 for a particular location or to coordinate with some other sensor information.
Alternatively, an automated adjustment algorithm can be used to select optimum configurations based on the sensor information.
-13 -For example, in one embodiment, mobile structure 101 may be located in an area identified on a chart using position data, a user may have selected a user setting for a configuration of sonar system 110, and controller 130 may be configured to control an actuator and/or otherwise implement the configuration for sonar system 110 (e.g., to set a particular orientation). In still another embodiment, controller 130 may be configured to receive orientation measurements for mobile structure 101. In such embodiment, controller 130 may be configured to control the actuators associated with the transducer assembly to maintain its orientation relative to, for example, the mobile structure and/or the water surface, and thus improve the displayed sonar images (e.g., by ensuring consistently oriented acoustic beams and/or proper registration of a series of acoustic returns). In various embodiments, controller 130 may be configured to control steering sensor/actuator 150 and/or propulsion system 170 to adjust a position and/or orientation of mobile structure 101 to help ensure proper registration of a series of acoustic returns, sonar data, and/or sonar imagery.
Although Fig. lA shows various sensors and/or other components of system 100 1 5 separate from sonar system 110, in other embodiments, any one or combination of sensors and components of system 100 may be integrated with a sonar assembly, an actuator, a transducer module, and/or other components of sonar system 110. For example, OPS 190 may be integrated with a transducer module of sonar system 110 and be configured to provide measurements of an absolute and/or relative orientation (e.g., a roll, pitch, and/or yaw) of the transducer module to controller 130 and/or user interface 120, both of which may also be integrated with sonar system 110.
Radar system 160 may be implemented as one or more electrically and/or mechanically coupled controllers, transmitters, receivers, transceivers, signal processing logic devices, various electrical components, antenna elements of various shapes and sizes, multichannel antennas/antenna modules, radar assemblies, assembly brackets, mast brackets, and/or various actuators adapted to adjust orientations of any of the components of radar system 160, as described herein. For example, in various embodiments, radar system 160 may be implemented according to various radar system arrangements (e.g., remote sensing system arrangements) that can be used to detect features of and objects on or above a terrestrial surface or a surface of a body of water, for instance, and/or their relative velocities (e.g., their Doppler velocities).
-14 -More generally, radar system 160 may be configured to emit one, multiple, or a series of radar beams (e.g., remote sensor beams), receive corresponding radar returns (e.g., remote sensor returns), and convert the radar returns into radar data and/or imagery (e.g., remote sensor image data), such as one or more intensity plots and/or aggregation of intensity plots indicating a relative position, orientation, and/or other characteristics of structures, weather phenomena, waves, other mobile structures, surface boundaries, and/or other objects reflecting the radar beams back at radar system 160. Radar system 160 may be configured to provide such data and/or imagery to user interface 120 for display to a user, for example, or to controller 130 for additional processing, as described herein. Moreover, such data may be used to generate one or more charts corresponding to AIS data, ARPA data, MARPA data, and or one or more other target tracking and/or identification protocols.
In some embodiments, radar system 160 may be implemented using a compact design, where multiple radar antennas, sensors, and/or associated processing devices are located within a single radar assembly housing that is configured to interface with the rest of system 1 5 100 through a single cable providing both power and communications to and from radar system 160. In some embodiments, radar system 160 may include orientation and/or position scnsors (e.g., OPS 190) configured to help provide two or three-dimensional waypoints, increase radar data and/or imagery quality, and/or provide highly accurate radar image data, as described herein.
2 0 For example, fisherman desire highly detailed and accurate information and/or imagery of local and remote structures, other watercraft, and other environmental or natural stationary or mobile objects, such as rock outcroppings, beaches, and birds and other natural animals. Conventional radar systems can be expensive and bulky and typically cannot be used to provide relatively accurate and/or distortion free radar image data, as described herein.
Embodiments of radar system 160 include low cost single, dual, and/or multichannel (e.g., synthetic aperture) radar systems that can be configured to produce detailed two and three-dimensional radar data and/or imagery. In some embodiments, radar system 160 may consolidate electronics and transducers into a single waterproof package to reduce size and costs, for example, and may be implemented with a single connection to other devices of system 100 (e.g., via an Ethernet cable with power over Ethernet, an integral power cable, and/or other communication and/or power transmission conduits integrated into a single interface cable).
-15 -In various embodiments, radar system 160 may be implemented with its own dedicated OPS 190, which may include various orientation and/or position sensors (e.g., similar to orientation sensor 140, gyroscope/accelerometer 144, and/or GNSS 146) that may be incorporated within the radar assembly housing to provide three dimensional orientations and/or positions of the radar assembly and/or antenna(s) for use when processing or post processing radar data for display. The sensor information can be used to correct for movement of the radar assembly during and/or between beam emissions to provide improved alignment of corresponding radar retums/samples, for example, and/or to generate imagery based on the measured orientations and/or positions of the radar assembly/antenna. In other embodiments, an external orientation and/or position sensor can be used alone or in combination with an integrated sensor or sensors.
In embodiments where radar system 160 is implemented with one or more position sensors, radar system 160 may be configured to provide a variety of radar data and/or imagery enhancements. For example, radar system 160 may be configured to provide accurate positioning and/or orienting of radar data and/or user-defined waypoints remote from mobile system 101. Similarly, radar system 160 may be configured to provide accurate two and/or three-dimensional aggregation and/or display of a series of radar data; without either orientation data or position data to help determine a track or heading, a radar system typically assumes a straight track, which can cause image artifacts and/or other inaccuracies in 2 0 corresponding radar data and/or imagery. Additionally, when implemented with a position sensor, radar system 160 may be configured to generate accurate and detailed intensity plots of objects on a surface of a body of water without access to a magnetometer.
In embodiments where radar system 160 is implemented with an orientation and/or position sensor, radar system 160 may be configured to store such location/position information along with other sensor information (radar returns, temperature measurements, text descriptions, altitude, mobile structure speed, and/or other sensor and/or control information) available to system 100. hi some embodiments, controller 130 may be configured to generate a look up table so that a user can select desired configurations of radar system 160 for a particular location or to coordinate with some other sensor information.
Alternatively, an automated adjustment algorithm can be used to select optimum configurations based on the sensor information.
-16 -For example, in one embodiment, mobile structure 101 may be located in an area identified on a chart using position data, a user may have selected a user setting for a configuration of radar system 160, and controller 130 may be configured to control an actuator and/or otherwise implement the configuration for radar system 160 (e.g., to set a particular orientation or rotation rate). In still another embodiment, controller 130 may be configured to receive orientation measurements for radar system 190 and/or mobile structure 101. In such embodiment, controller 130 may be configured to control actuators associated with a radar assembly to maintain its orientation relative to, for example, the mobile structure and/or the water surface, and thus improve the displayed sonar images (e.g., by ensuring consistently oriented radar beams and/or proper registration of a series of radar returns). In various embodiments, controller 130 may be configured to control steering sensor/actuator 150 and/or propulsion system 170 to adjust a position and/or orientation of mobile structure 101 to help ensure proper registration of a series of radar returns, radar data, and/or radar imagery.
1 5 In various embodiments, radar system 160 may also be implemented with a colocated imaging system, which may include one or more various types of imaging modules that may be incorporated within the radar assembly housing to provide image data substantially contemporaneous with radar data for use when processing or post processing radar data for display. The image data can be used to improve operator understanding of the radar data and 2 0 to increase the overall functionality of the remote sensing imaging system. For example, embodiments may include one or multiple imaging modules such that the imaging modules rotate with a radar antenna of radar system 160 to generate a panorama corresponding to a radar plan position indicator (PP1) display view. Embodiments provide methods of data processing, data fusion, and displaying the data and user interaction, as described herein.
Although Fig. TA shows various sensors and/or other components of system 100 separate from radar system 160, in other embodiments, any one or combination of sensors and components of system 100 may be integrated with a radar assembly, an actuator, a transducer module, and/or other components of radar system 160. For example, OPS 190 may be integrated with an antenna platform of sonar system 110 and be configured to provide measurements of an absolute and/or relative orientation (e.g., a roll, pitch, and/or yaw) of the antenna to controller 130 and/or user interface 120, both of which may also be integrated with radar system 160.
-17 -User interface 120 may be implemented as a display, a touch screen, a keyboard, a mouse, a joystick, a knob, a steering wheel, a ship's wheel or helm, a yoke, and/or any other device capable of accepting user input and/or providing feedback to a user. hi various embodiments, user interface 120 may be adapted to provide user input (e.g., as a type of signal and/or sensor information) to other devices of system 100, such as controller 130. User interface 120 may also be implemented with one or more logic devices that may be adapted to execute instructions, such as software instructions, implementing any of the various processes and/or methods described herein. For example, user interface 120 may be adapted to form communication links, transmit and/or receive communications (e.g., sensor signals, control signals, sensor information, user input, and/or other information), determine various coordinate frames and/or orientations, determine parameters for one or more coordinate frame transformations, and/or perform coordinate frame transformations, for example, or to perform various other processes and/or methods.
In various embodiments, user interface 120 may be adapted to accept user input, for 1 5 example, to form a communication link, to select a particular wireless networking protocol and/or parameters for a particular wireless networking protocol and/or wireless link (e.g., a password, an encryption key, a MAC address, a device identification number, a device operation profile, parameters for operation of a device, and/or other parameters), to select a method of processing sensor signals to determine sensor information, to adjust a position 2 0 and/or orientation of an articulated sensor, and/or to otherwise facilitate operation of system and devices within system 100. Once user interface 120 accepts a user input, the user input may be transmitted to other devices of system 100 over one or more communication links In one embodiment, user interface 120 may be adapted to receive a sensor or control signal (e.g., from orientation sensor 140 and/or steering sensor/actuator 150) over communication links _rimmed by one or more associated logic devices, for example, and display sensor and/or other information corresponding to the received sensor or control signal to a user. In related embodiments, user interface 120 may be adapted to process sensor and/or control signals to determine sensor and/or other information. For example, a sensor signal may include an orientation, an angular velocity, an acceleration, a speed, and/or a position of mobile structure 101. In such embodiment, user interface 120 may be adapted to process the sensor signals to determine sensor information indicating an estimated and/or absolute roll, -18 -pitch, and/or yaw (attitude and/or rate), and/or a position or series of positions of sonar system 110, radar system 160, and/or mobile structure 101, for example, and display the sensor information as feedback to a user. In one embodiment, user interface 120 may be adapted to display a time series of various sensor information and/or other parameters as part of or overlaid on a graph or map, which may be referenced to a position and/or orientation of mobile structure 101. For example, user interface 120 may be adapted to display a time series of positions, headings, and/or orientations of mobile structure 101 and/or other elements of system 100 (e.g., a transducer assembly and/or module of sonar system 110, or an antenna or radar assembly of radar system 160) overlaid on a geographical map, which may include one or more graphs indicating a corresponding time series of actuator control signals, sensor information, and/or other sensor and/or control signals, including sonar and/or radar image data.
In some embodiments, user interface 120 may be adapted to accept user input including a user-defined target heading, route (e.g., track for radar system 160), and/or 1 5 orientation for a transducer module, for example, and to generate control signals for steering sensor/actuator 150 and/or propulsion system 170 to cause mobile structure 101 to move according to the target heading, route, and/or orientation. In further embodiments, user interface 120 may be adapted to accept user input including a user-defined target attitude/absolute angular frequency for an actuated device (e.g., sonar system 110, radar system 160) coupled to mobile structure 101, for example, and to generate control signals for adjusting an orientation or rotation of the actuated device according to the target attitude/angular frequency. More generally, user interface 120 may be adapted to display sensor information to a user, for example, and/or to transmit sensor information and/or user input to other user interfaces, sensors, or controllers of system 100, for instance, for display 2 5 and/or further processing. In one embodiment, user interface 120 may be integrated with one or more sensors (e.g., imaging modules, position and/or orientation sensors, other sensors) and/or be portable (e.g., such as a portable touch display or smart phone, for example, or a wearable user interface) to facilitate user interaction with various systems of mobile structure 101.
Controller 130 may be implemented as any appropriate logic device (e.g., processing device, microcontroller, processor, application specific integrated circuit (ASIC), field programmable gate array (FPGA), memory storage device, memory reader, or other device or -19 -combinations of devices) that may be adapted to execute, store, and/or receive appropriate instructions, such as software instructions implementing a control loop for controlling various operations of sonar system 110, radar system 160, steering sensor/actuator 150, mobile structure 101, and/or system 100, for example. Such software instructions may also implement methods for processing sensor signals, determining sensor information, providing user feedback (e.g., through user interface 120), querying devices for operational parameters, selecting operational parameters for devices, or performing any of the various operations described herein (e.g., operations performed by logic devices of various devices of system 100).
1 0 In addition, a machine-readable medium may be provided for storing non-transitory instructions for loading ink) and execution by controller 130. In these and other embodiments, controller 130 may be implemented with other components where appropriate, such as volatile memory, non-volatile memory, one or more interfaces, and/or various analog and/or digital components for interfacing with devices of system 100. For example, controller 130 may be adapted to store sensor signals, sensor information, parameters for coordinate frame transformations, calibration parameters, sets of calibration points, and/or other operational parameters, over time, for example, and provide such stored data to a user using user interface 120. In some embodiments, controller 130 may be integrated with one or more user interfaces (e.g., user interface 120), and, in one embodiment, may share a communication 2 0 module or modules. As noted herein, controller 130 may be adapted to execute one or more control loops for actuated device control, steering control (e.g., using steering sensor/actuator 150) and/or performing other various operations of mobile structure 101 and/or system 100. In some embodiments, a control loop may include processing sensor signals and/or sensor information in order to control one or more operations of sonar system 110, radar system 160, mobile structure 101, and/or system 100.
OPS 190 may be implemented as an integrated selection of orientation and/or position sensors (e.g., orientation sensor 140, accelerometer/gyroscope 144, GNSS 146) that is configured to provide orientation and/or position data in relation to one or more elements of system 100. For example, embodiments of OPS 190 may be integrated with mobile structure 101, sonar system 110, and/or radar system 160 and be configured to provide orientation and/or position data corresponding to a center of mass of mobile structure 101, a sonar transducer of sonar system 110, and/or a radar antenna of radar system 160. Such -20 -measurements may be referenced to an absolute coordinate frame, for example, or may be referenced to a coordinate frame of OPS 190 and/or any one of the individual sensors integrated with OPS 190. More generally, OPS 190 provides a single, relatively compact integrated device that can be replicated throughout various elements of system 100, which in some embodiments may include a single/ simplified interface for data and/or power. In various embodiments, the coordinate frames for one or more of the orientation and/or position sensors integrated into OPS 190 may be referenced to each other (e.g., to a single coordinate frame for OPS 190), such as at time of manufacture, to reduce or eliminate a need to determine coordinate frame transformations to combine data from multiple sensors of OPS 190 during operation of system 100.
Orientation sensor 140 may be implemented as one or more of a compass, Float, accelerometer, magnetometer, and/or other digital or analog device capable of measuring an orientation of mobile structure 101 (e.g., magnitude and direction of roll, pitch, and/or yaw, relative to one or more reference orientations such as gravity and/or Magnetic North) and providing such measurements as sensor signals that may be communicated to various devices of system 100. In some embodiments, orientation sensor 140 may be adapted to provide heading measurements for mobile structure 101. In other embodiments, orientation sensor 140 may be adapted to provide roll, pitch, and/or yaw rates for mobile structure 101 (e.g., using a time series of orientation measurements). Orientation sensor 140 may be positioned 2 0 and/or adapted to make orientation measurements in relation to a particular coordinate frame of mobile structure 101, for example. In various embodiments, orientation sensor 140 may be implemented and/or operated according to any of the systems and methods described in International Application PCT/US14/38286 filed May 15, 2014 and entitled "AUTOMATIC COMPASS CALIBRATION SYSTEMS AND METHODS".
2 5 Speed sensor 142 may be implemented as an electronic pitot tube, metered gear or wheel, water speed sensor, wind speed sensor, a wind velocity sensor (e.2., direction and magnitude) and/or other device capable of measuring or determining a linear speed of mobile structure 101 (e.g., in a surrounding medium and/or aligned with a longitudinal axis of mobile structure 101) and providing such measurements as sensor signals that may be communicated to various devices of system 100. In some embodiments, speed sensor 142 may be adapted to provide a velocity of a surrounding medium relative to sensor 142 and/or mobile structure 101.
-21 -Gyroscope/accelerometer 144 may be implemented as one or more electronic sextants, semiconductor devices, integrated chips, accelerometer sensors, accelerometer sensor systems. MEMS gyroscopes and/or accelerometers, or other devices capable of measuring angular velocities/accelerations and/or linear accelerations (e.g., direction and magnitude) of mobile structure 101 and providing such measurements as sensor signals that may be communicated to other devices of system 100 (e.g., user interface 120, controller 130). Gyroscope/ accelerometer 144 may be positioned and/or adapted to make such measurements in relation to a particular coordinate frame of mobile structure 101, for example, or some other element of system 100. In various embodiments, gyroscope/ accelerometer 144 may be implemented in a common housing and/or module to ensure a common reference frame or a known transformation between reference frames.
GNSS 146 may he implemented as a global positioning satellite receiver and/or other device capable of determining absolute and/or relative position of mobile structure 101 (e.g., or an element of mobile structure 101, such as sonar system 110 radar system 160, and/or user 1 5 interface 120) based on wireless signals received from space-born and/or terrestrial sources, for example, and capable of providing such measurements as sensor signals that may be communicated to various devices of system 100. More generally, GNSS 146 may be implemented to any one or combination of a number of different GNSSs. In some embodiments, GNSS 146 may be used to determine a velocity, speed, COG, SOG, track.
and/or yaw rate of mobile structure 101 (e.g., using a time series of position measurements), such as an absolute velocity and/or a yaw component of an angular velocity of mobile structure 101. In various embodiments, one or more logic devices of system 100 may be adapted to determine a calculated speed of mobile structure 101 and/or a computed yaw component of the angular velocity from such sensor information.
Steering sensor/actuator 150 may be adapted to physically adjust a heading of mobile structure 101 according to one or more control signals, user inputs, and/or stabilized attitude estimates provided by a logic device of system 100, such as controller 130. Steering sensor/actuator 150 may include one or more actuators and control surfaces (e.g., a rudder or other type of steering or trim mechanism) of mobile structure 101 and may be adapted to physically adjust the control surfaces to a variety of positive and/or negative steering angles/positions.
-22 -Propulsion system 170 may be implemented as a propeller, turbine, or other thrust-based propulsion system, a mechanical wheeled and/or tracked propulsion system, a sail-based propulsion system, and/or other types of propulsion systems that can be used to provide motive force to mobile structure 101. In some embodiments, propulsion system 170 may be non-articulated, for example, such that the direction of motive force and/or thrust generated by propulsion system 170 is fixed relative to a coordinate frame of mobile structure 101. Non-limiting examples of non-articulated propulsion systems include, for example, an inboard motor for a watercraft with a fixed thrust vector, for example, or a fixed aircraft propeller or turbine. In other embodiments, propulsion system 170 may be articulated, for example, and may be coupled to and/or integrated with steering sensor/actuator 150, for example, such that the direction of generated motive force and/or thrust is variable relative to a coordinate frame of mobile structure 101. Non-limiting examples of articulated propulsion systems include, for example, an outboard motor for a watercraft, an inboard motor for a watercraft with a variable thrust vector/port (e.g., used to steer the watercraft), a sail, or an 1 5 aircraft propeller or turbine with a variable thrust vector, for example.
Other modules 180 may include other and/or additional sensors, actuators, communications modules/nodes, and/or user interface devices used to provide additional environmental information of mobile structure 101, for example. In some embodiments, other modules 180 may include a humidity sensor, a wind and/or water temperature sensor, a barometer, a radar system, a visible spectrum camera, an infrared camera, and/or other environmental sensors providing measurements and/or other sensor signals that can be displayed to a user and/or used by other devices of system 100 (e.g., controller 130) to provide operational control of mobile structure 101 and/or system 100 that compensates for environmental conditions, such as wind speed and/or direction, swell speed, amplitude, and/or direction, and/or an object in a path of mobile structure 101, for example.
In other embodiments, other modules 180 may include one or more actuated devices (e.g., spotlights, infrared illuminators, cameras, radars, sonars, and/or other actuated devices) coupled to mobile structure 101, where each actuated device includes one or more actuators adapted to adjust an orientation of the device, relative to mobile structure 101, in response to one or more control signals (e.g., provided by controller 130). Other modules 180 may include a sensing element angle sensor, for example, which may be physically coupled to a radar assembly housing of radar system 160 and be configured to measure an angle between -23 -an orientation of an antenna/sensing element and a longitudinal axis of the housing and/or mobile structure 101. Other modules 180 may also include a rotating antenna platform and/or corresponding platform actuator for radar system 160. In some embodiments, other modules 180 may include one or more Helmholtz coils integrated with OPS 190, for example, and be configured to selectively cancel out one or more components of the Earth's magnetic field.
In general, each of the elements of system 100 may be implemented with any appropriate logic device (e.g., processing device, microcontroller, processor, application specific integrated circuit (ASIC), field programmable gate array (FPGA), memory storage device, memory reader, or other device or combinations of devices) that may be adapted to execute, store, and/or receive appropriate instructions, such as software instructions implementing a method for providing sonar data and/or imagery, for example, or for transmitting and/or receiving communications, such as sensor signals, sensor information, and/or control signals, between one or more devices of system 100. In one embodiment, such method may include instructions to receive an orientation, acceleration, position, and/or speed of mobile structure 101 and/or sonar system 110 from various sensors, to determine a transducer orientation adjustment (e.g., relative to a desired transducer orientation) from the sensor signals, and/or to control an actuator to adjust a transducer orientation accordingly, for example, as described herein. In a further embodiment, such method may include instructions for forming one or more communication links between various devices of system 100.
2 0 In addition, one or more machine readable mediums may be provided for storing non-transitory instructions for loading into and execution by any logic device implemented with one or more of the devices of system 100. In these and other embodiments, the logic devices may be implemented with other components where appropriate, such as volatile memory, non-volatile memory, and/or one or more interfaces (e.g., inter-integrated circuit (I2C) 2 5 interfaces, mobile industry processor interfaces (M1P1), joint test action group (JTAG) interfaces (e.g.. IEEE 1149.1 standard test access port and boundary-scan architecture), and/or other interfaces, such as an interface for one or more antennas, or an interface for a particular type of sensor).
Each of the elements of system 100 may be implemented with one or more amplifiers, modulators, phase adjusters, beamfoiming components, digital to analog converters (DACs), analog to digital converters (ADCs), various interfaces, antennas, transducers, and/or other -24 -analog and/or digital components enabling each of the devices of system 100 to transmit and/or receive signals, for example, in order to facilitate wired and/or wireless communications between one or more devices of system 100. Such components may be integrated with a corresponding element of system 100, for example. In some embodiments, the same or similar components may be used to perform one or more sensor measurements, as described herein.
For example, the same or similar components may be used to create an acoustic pulse (e.g., a transmission control signal and/or a digital shaping control signal), convert the acoustic pulse to an excitation signal (e.g., a shaped or unshaped transmission signal) and 1 0 transmit it to a sonar transducer element to produce an acoustic beam, receive an acoustic return (e.g., a sound wave received by the sonar transducer element and/or corresponding electrical signals from the sonar transducer clement), convert the acoustic return to acoustic return data, and/or store sensor information, configuration data, and/or other data corresponding to operation of a sonar system, as described herein. Similarly, the same or similar components may be used to create a radar pulse (e.g., a transmission control signal and/or a digital shaping control signal), convert the radar pulse to an excitation signal (e.g., a shaped or unshaped transmission signal) and transmit it to a radar antenna to produce a radar beam, receive a radar return (e.g., an electromagnetic wave received by the radar antenna and/or corresponding electrical signals from the radar antenna), convert the radar return to radar return data, and/or store sensor information, configuration data, and/or other data corresponding to operation of a radar system, as described herein.
Sensor signals, control signals, and other signals may be communicated among elements of system 100 using a variety of wired and/or wireless communication techniques, including voltage signaling, Ethernet, WiFi, Bluetooth, Zigbee, Xbee, Micronet, or other 2 5 medium and/or short range wired and/or wireless networking protocols and/or implementations, for example. In such embodiments, each element of system 100 may include one or more modules supporting wired, wireless, and/or a combination of wired and wireless communication techniques.
In some embodiments, various elements or portions of elements of system 100 may be integrated with each other, for example, or may be integrated onto a single printed circuit board (PCB) to reduce system complexity, manufacturing costs, power requirements, and/or -25 -timing errors between the various sensor measurements. For example, gyroscope/accelerometer 144, user interface 120, and controller 130 may be configured to share one or more components, such as a memory, a logic device, a communications module, and/or other components, and such sharing may act to reduce and/or substantially eliminate such timing errors while reducing overall system complexity and/or cost.
Each element of system 100 may include one or more batteries or other electrical power storage devices, for example, and may include one or more solar cells or other electrical power generating devices (e.g., a wind or water-powered turbine, or a generator producing electrical power from motion of one or more elements of system 100). In some 1 0 embodiments, one or more of the devices may be powered by a power source for mobile structure 101, using one or more power leads. Such power leads may also be used to support one or more communication techniques between elements of system 100.
In various embodiments, a logic device of system 100 (e.g., of orientation sensor 140 and/or other elements of system 100) may be adapted to determine parameters (e.g., using signals from various devices of system 100) for transforming a coordinate frame of sonar system 110 and/or other sensors of system 100 to/from a coordinate frame of mobile structure 101, at-rest and/or in-motion, and/or other coordinate frames, as described herein. One or more logic devices of system 100 may be adapted to use such parameters to transform a coordinate frame of sonar system 110, radar system 160, and/or other sensors of system 100 to/from a coordinate frame of orientation sensor 140 and/or mobile structure 101, for example. Furthermore, such parameters may be used to determine and/or calculate one or more adjustments to an orientation of sonar system 110 and/or radar system 160 that would be necessary to physically align a coordinate frame of sonar system 110 and/or radar system 160 with a coordinate frame of orientation sensor 140 and/or mobile structure 101, for example, or 2 5 an absolute coordinate frame. Adjustments determined from such parameters may be used to selectively power adjustment servos/actuators (e.g., of sonar system 110, radar system 160, and/or other sensors or elements of system 100), for example, or may be communicated to a user through user interface 120, as described herein.
Fig. 1B illustrates a diagram of system 100B in accordance with an embodiment of the disclosure. In the embodiment shown in Fig. 1B, system 100B may be implemented to provide sonar and/or radar data and/or imagery for use with operation of mobile structure 101, -26 -similar to system 100 of Fig. 1A. For example, system 100B may include sonar system/UPS 110/190, radar system/UPS 160/190, integrated user interface/controller 120/130, secondary user interface/UPS 120/190, steering sensor/actuator 150, sensor cluster/UPS 190 (e.g., orientation sensor 140, gyroscope/accelerometer 144, and/or GNSS 146), and various other sensors and/or actuators. In the embodiment illustrated by Fig. 1B, mobile structure 101 is implemented as a motorized boat including a hull 105b, a deck 106b, a transom 107b, radar system/UPS 160/190 coupled to mast/sensor mount 108b, a rudder 152, an inboard motor 170, and an actuated sonar system 110 coupled to transom 107b. In other embodiments, hull 105b, deck 106b, mast/sensor mount 108b, rudder 152, inboard motor 170, and various actuated devices may correspond to attributes of a passenger aircraft or other type of vehicle, robot, or drone, for example, such as an undercarriage, a passenger compartment, an engine/engine compartment, a trunk, a roof, a steering mechanism, a headlight, a radar system, and/or other portions of a vehicle.
As depicted in Fig. 1B, mobile structure 101 includes actuated sonar system 110, which in turn includes UPS 190 integrated with transducer assembly 112, which are coupled to transom 107b of mobile structure 101 through assembly bracket/actuator 116 and transom bracket/electrical conduit 114. In some embodiments, assembly bracket/actuator 116 may be implemented as a roll, pitch, and/or yaw actuator, for example, and may be adapted to adjust an orientation of transducer assembly 112 according to control signals and/or an orientation (e.g., roll, pitch, and/or yaw) or position of mobile structure 101 provided by user interface/controller 120/130. For example, user interface/controller 120/130 may be adapted to receive an orientation of transducer assembly 112 configured to ensonify a portion of surrounding water and/or a direction referenced to an absolute coordinate frame, and to adjust an orientation of transducer assembly 112 to retain ensonification of the position and/or direction in response to motion of mobile structure 101, using one or more orientations and/or positions of mobile structure 101 and/or other sensor infoimation derived by executing various methods described herein.
In another embodiment, user interface/controller 120/130 may be configured to adjust an orientation of transducer assembly 112 to direct sonar transmissions from transducer assembly 112 substantially downwards and/or along an underwater track during motion of mobile structure 101. In such embodiment, the underwater track may be predetermined, for example, or may be determined based on criteria parameters, such as a minimum allowable -27 -depth, a maximum ensonified depth, a bathymetric route, and/or other criteria parameters. Transducer assembly 112 may be implemented with a sonar position and/or orientation sensor (SPOS), which may include one or more sensors corresponding to orientation sensor 140, gyroscope/accelerometer 144 and/or GNSS 146, for example, that is configured to provide absolute and/or relative positions and/or orientations of transducer assembly 112 to facilitate actuated orientation of transducer assembly 112.
Also shown in Fig. 1B is radar system 160, which may include integrated OPS 190 and a radar antenna platform and actuator configured to rotate the radar antenna about a vertical axis substantially aligned with vertical axis 104 of mobile structure 101. In some embodiments, user interface/controller 120/130 may be configured to receive radar returns from a radar assembly of radar system/OPS 160/190, and corresponding orientation and/or position data from radar system/OPS 160/190 (e.g., corresponding to an orientation and/or position of an antenna of radar system 160 when the radar returns are received), and then generate radar image data based, at least in part, on the radar returns and the corresponding 1 5 orientation and/or position data.
More generally, both sonar system 110 and radar system 160 are types of remote sensing systems, each with remote sensing assemblies (e.g., sonar assemblies, radar assemblies) including housings adapted to be mounted to mobile structure 101, each with OPS disposed within their respective housings and adapted to measure an orientation and/or 2 0 position of an associated sensing element (e.g., sonar transducer, radar antenna), and each having access to or integrated with a logic device (e.g., controller 130) configured to receive remote sensor returns from the corresponding remote sensing assembly and sensor return orientation and/or position data from the corresponding OPS and generate remote sensor image data based, at least in part, on the remote sensor returns and the sensor return 2 5 orientation and/or position data. Once the remote sensor image data is received, user interface/controller 120/130 may be configured to render the remote sensor image data on a display of any one of user interface 120, for example. Ihi some embodiments, multiple sets of remote sensor image data may be displayed on the same user interface using one or more georeferenced, target references, and/or source references overlays.
In one embodiment, user interfaces 120 may be mounted to mobile structure 101 substantially on deck 106b and/or mast/sensor mount 108b. Such mounts may be fixed, for -28 -example, or may include gimbals and other leveling mechanisms/actuators so that a display of user interfaces 120 can stay substantially level with respect to a horizon and/or a "down" vector (e.g., to mimic typical user head motion/orientation), for example, or so the display can be oriented according to a user's desired view. In another embodiment, at least one of user interfaces 120 may be located in proximity to mobile structure 101 and be mobile/portable throughout a user level (e.g., deck 106b) of mobile structure 101. For example, a secondary user interface 120 may be implemented with a lanyard, strap, headband, and/or other type of user attachment device and be physically coupled to a user of mobile structure 101 so as to be in proximity to the user and mobile structure 101. In various embodiments, user interfaces 120 may be implemented with a relatively thin display that is integrated into a PCB of the corresponding user interface in order to reduce size, weight, housing complexity, and/or manufacturing costs.
As shown in Fig. 1B, in some embodiments, speed sensor 142 may be mounted to a portion of mobile structure 101, such as to hull 105b, and be adapted to measure a relative water speed. In some embodiments, speed sensor 142 may be adapted to provide a thin profile to reduce and/or avoid water drag. In various embodiments, speed sensor 142 may be mounted to a portion of mobile structure 101 that is substantially outside easy operational accessibility. Speed sensor 142 may include one or more batteries and/or other electrical power storage devices, for example, and may include one or more water-powered turbines to generate electrical power. In other embodiments, speed sensor 142 may be powered by a power source for mobile structure 101, for example, using one or more power leads penetrating hull 105b. In alternative embodiments, speed sensor 142 may be implemented as a wind velocity sensor, for example, and may be mounted to mast/sensor mount 108b to have relatively clear access to local wind.
In the embodiment illustrated by Fig. 1B, mobile structure 101 includes direction/longitudinal axis 102, direction/lateral axis 103, and direction/vertical axis 104 meeting approximately at mast/sensor mount 108b (e.g., near a center of gravity of mobile structure 101). In one embodiment, the various axes may define a coordinate frame of mobile structure 101 and/or sensor cluster 160.
Each sensor adapted to measure a direction (e.g., velocities, accelerations, headings, or other states including a directional component) may be implemented with a mount, actuators, -29 -and/or servos that can be used to align a coordinate frame of the sensor with a coordinate frame of any clement of system 100B and/or mobile structure 101. Each clement of system 100B may be located at positions different from those depicted in Fig. 1B. Each device of system 100B may include one or more batteries or other electrical power storage devices for example, and may include one or more solar cells or other electrical power generating devices. In some embodiments, one or more of the devices may be powered by a power source for mobile structure 101. As noted herein, each element of system 100B may be implemented with an antenna, a logic device, and/or other analog and/or digital components enabling that element to provide, receive, and process sensor signals and interface or communicate with one or more devices of system 100B. Further, a logic device of that element may be adapted to perform any of the methods described herein.
Fig. 2 illustrates a diagram of a remote sensing imagery system 200 in accordance with an embodiment of the disclosure. In the embodiment shown in Fig. 2, system 200 includes a remote sensing assembly 210 (e.g., a radar or sonar assembly) that can be coupled to a user interface (e.g., user interface 120 of Fig. 1A) and/or a power source through a single 1/0 cable 214. As shown, remote sensing assembly 210 may include one or more system controllers 220, sensing elements (e.g., transducer/ antenna 264), OPS 190, imaging system 282, and/or other devices 280 facilitating operation of system 200 all disposed within a common housing 211. In other embodiments, one or more of the devices shown in Fig. 2 may 2 0 be integrated with a remote user interface and communicate with remaining devices within remote sensing assembly 210 through one or more data and/or power cables similar to I/0 cable 214.
Controller 220 may be implemented as any appropriate logic device (e.g., processing device, microcontroller, processor, application specific integrated circuit (ASIC), field 2 5 programmable gate array (FPGA), memory storage device, memory reader, or other device or combinations of devices) that may be adapted to execute, store, and/or receive appropriate instructions, such as software instructions implementing a control loop for controlling various operations of remote sensing assembly 210 and/or system 200, for example, similar to controller 130. In typical embodiments, controller 220 may be tasked with overseeing general operation of remote sensing assembly 210, generating remote sensor image data from remote sensor returns and sensor return orientation and/or position data, correlating sensor data with remote sensor data/imagery, communicating operational parameters and/or sensor information -30 -with other devices through I/0 cable 214, and/or other operations of system 200. Controller 220 may in some embodiments be implemented with relatively high resolution timing circuitry capable of generating digital transmission and/or sampling control signals for operating transmitters, receivers, transceivers, signal conditioners, and/or other devices of remote sensing assembly 210, for example, and other time critical operations of system 200, such as per-sample digital beamfortnin and/or interferornetry operations applied to remote sensor returns from sensing element 264, as described herein.
In some embodiments, controller 220 may be implemented in a distributed manner across a number of individual controllers. In a particular embodiment, controller 220 may be 1 0 implemented as a dual-core processor with one core dedicated to receiving a processing sensor data provided by OPS 1 90, for example, and the other core dedicated to all remaining operations of remote sensor system 200 (e.g., receiving and processing remote sensor data, external interfacing with other elements of system 100, system control, and system health monitoring).
Transceiver 234 may be implemented with one or more digital to analog converters (DACs), signal shaping circuits, filters, phase adjusters, signal conditioning elements, amplifiers, timing circuitry, logic devices, and/or other digital and/or analog electronics configured to accept digital control signals from controller 220 and to generate transmission signals to excite a transmission channel/element of remote sensing assembly 210 (e.g., sensing element 264, which in some embodiments can be used to transmit remote sensor beams and receive sensor returns) to produce one or more remote sensor beams. In some embodiments, various transmission operations of transceiver 234 (e.2., amplification, frequency dependent filtering, transmit signal frequency, duration, shape, and/or timing/triggering, and/or other signal attributes), may be controlled (e.g., through use of various control signals) by controller 220, as described herein.
Transceiver 243 may also be implemented with one or more analog to digital converters (ADCs), filters, phase adjusters, signal conditioning elements, amplifiers, timing circuitry, logic devices, and/or other digital and/or analog electronics configured to accept analog remote sensor returns from a corresponding receive channel/sensing element of remote sensing assembly 210 (e.g., sensing element 264), convert the analog remote sensor returns into digital remote sensor returns, and provide Ihe digital sensor returns to controller 220. In -31 -some embodiments, various receive operations of transceiver 234 (e.g., amplification, frequency dependent filtering, bascbanding, sample resolution, duration, and/or timing/ triggering, and/or other ADC/signal attributes) may be controlled by controller 220.
For example, controller 220 may be configured to use transceiver 234 to convert a remote sensor return into a digital remote sensor return comprising one or more digital baseband transmissions that are then provided to controller 220. In some embodiments, transceiver 234 may be configured to low-pass or otherwise filter, amplify, decimate, and/or otherwise process the analog and/or digital remote sensor returns (e.g., using analog and/or digital signal processing) prior to providing the digital remote sensor returns to controller 220.
In other embodiments, transceiver 234 may be configured to provide substantially unprocessed (e.g., raw) analog and/or digital remote sensor returns to controller 220 for further signal processing, as described herein. In further embodiments, transceiver 234 may be implemented as one or more separate transmitters and receivers.
In the embodiment shown in Fig. 2, sensing element 264 is implemented as a single transmission/receive channel that may be configured to transmit remote sensor beams and receive remote sensor returns through emission surface 212 of housing 211. In some embodiments, remote sending assembly 210 may be implemented with multiple transmission and/or receive channels (e.g., a multichannel sonar transducer, or a multichannel/synthetic aperture radar antenna). In general, remote sending assembly 210 may be implemented with 2 0 one, two, or many separate elements configured to produce one or more remote sensor beams, and one, two, or many separate sensing elements configured to receive remote sensor returns. The effective volumetric shapes of the remote sensor beams and remote sensor returns may be determined by the shapes and arrangements of their corresponding transducer elements. In multichannel embodiments, the various channels may be arranged to facilitate multichannel 2 5 processing, such as beamforming, interferometry, inter-beam interpolation, and/or other types of multichannel processing used to produce remote sensor data and/or imagery.
In Fig. 2, sensing element 264 is coupled to its electronics over leads 218 and through shielding 219. In various embodiments, leads 218 and/or shielding 219 may be implemented as one or more shielded transmission lines configured to convey analog and/or digital signals between the various elements while shielding transceiver 234 and sensing element 264 from electromagnetic interference from each other, other elements of remote sensing assembly 210 -32 - (e.2., OPS 190), and/or external sources. In some embodiments, leads 218 and shielding 219 may be integrated together to form a transmission system. For example, shielding 219 may be configured to provide a ground plane/return for signals conveyed by leads 218.
As shown, remote sensing assembly 210 is implemented with OPS 190, which may be configured to measure a relative and/or absolute orientation and/or position of remote sensing assembly 210 and/or sensing element 264 and provide such measurements to controller 220. In some embodiments, controller 220 may be configured to combine remote sensor data and/or imagery according to such measurements and/or measurements of an orientation and/or position of a coupled mobile structure to produce combined remote sensor data and/or 1 0 imagery, such as multiple co-registered remote sensor images, for example, and/or three-dimensional remote sensor imagery. In other embodiments, controller 220 may be configured to use orientation and/or position measurements of remote sensing assembly 210 and/or a coupled mobile structure to control one or more actuators (e.g., other devices 280) to adjust a position and/or orientation of remote sensing assembly 210 and/or sensing element 264 and 1 5 emit remote sensor beams towards a particular position and/or orientation, for example, or otherwise control motion of remote sensing assembly 210 and/or sensing element 264.
As shown, remote sensing assembly 210 is also implemented with colocated imaging system 282, which may be configured to generate relatively high resolution panoramic images that are coincident with lower resolution radar data. For example, in some embodiments, such 2 0 panoramic images may be generated using any the techniques described in International Patent Application No. PCT/US2019/032440 filed May 15, 2019 and entitled" PANORAMIC IMAGE CONSTRUCTION BASED ON IMAGES CAPTURED BY ROTATING IMAGER".
The radar provides information on the range, bearing and velocity of targets, while colocated imaging system 282 provides a contemporaneous image of the targets. Combining the two considerably improves the ability to detect and classify the targets. In various embodiments, remote sensing assembly 210 may be implemented as a rotating radar integrated with collocated imaging system 282. Spinning imaging system 282 about a rotational axis of remote sensing assembly 210 produces 360 scans of the surrounding environment, and by fitting it into the remote sensing assembly 210, the images can be easily aligned with the radar data. This offers the ability to fuse the two types of data in a number of -33 -different arrangements, as described herein. In various embodiments, colocated imaging system 282 may be configured to image the environment through substantially the same surface 212, for example, or through any of the surfaces of housing 211 (e.g., including a surface opposite surface 212).
Other devices 280 may include other and/or additional sensors, sensor arrays, actuators, logic devices, communications modules/nodes, power distribution components, and/or user interface devices used to provide additional environmental information and/or configuration parameters, for example, and/or to adjust a position and/or orientation of remote sensing assembly 210 and/or sensing element 264. In some embodiments, other devices 280 1 0 may include a visible spectrum camera, an infrared camera, and/or other environmental sensors providing measurements and/or other sensor signals that can be displayed to a user and/or used by other devices of remote sensing assembly 210 (e.g., controller 220) to provide operational control of remote sensing assembly 210. In some embodiments, other devices 280 may include one or more actuators adapted to adjust an orientation (e.g., roll, pitch, 1 5 and/or yaw) and/or a position (longitudinal, lateral, and/or vertical) of remote sensing assembly 210 and/or sensing dement 264 relative to a coupled mobile structure, in response to one or more control signals (e.g., provided by controller 220). In other embodiments, other devices 280 may include one or more brackets, such as a transom bracket or a mast bracket, adapted to couple housing 211 to a mobile structure.
2 0 Other devices 280 may also include a sensing element angle sensor, for example, which may be physically coupled to housing 211 of remote sensing assembly 210 and be configured to measure an angle between an orientation of sensing element 264 and a longitudinal axis of housing 211 and/or mobile structure 101, and provide such angle (e.g., as orientation and/or position data) to controller 220 and/or 130. Such sensing element angle sensor may also be implemented as an OPS, similar to OPS 190, for example, or an optical sensor, as described herein. Other devices 280 may also include a rotating platform and/or corresponding platform actuator for sensing element 264 and/or remote sensing assembly 210. In some embodiments, other devices 280 may include one or more Helmholtz coils integrated with OPS 190, for example, and be configured to selectively cancel out one or more components of the Earth's magnetic field, as described herein.
-34 -In various embodiments, remote sensing assembly 210 may be implemented in a single housing 211 with a single interface (e.g., I/O cable 214) to simplify installation and use. For example, I/0 cable 214 may be implemented as a power-over-Ethernet (POE) cable supporting transmission of both communications and power between remote sensing assembly 210 and elements of a coupled mobile structure. Such communications and/or power may be delivered over leads 216 to power supply 215 and/or controller 220. Power supply 215 may be implemented as one or more power conditioners, line filters, switching power supplies, DC to DC converters, voltage regulators, power storage devices (e.g., batteries), and/or other power supply devices configured to receive power over leads 216 and/or distribute power to the various other elements of remote sensing assembly 210.
Fig. 3A illustrates a diagram of a remote sensing imagery system 300 in accordance with an embodiment of the disclosure. In the embodiment shown in Fig. 3A, remote sensing imagery system 300 is implemented as a dome radar system including a dome radar assembly 310, housing 311, and radar antenna 364 shielded from system controller 320 and OPS 190 by shielding 319, which correspond to and/or may be implemented similarly to remote sensing assembly 210, housing 211, sensing element 264, controller 220. OPS 190, and shielding 219 of Fig. 2, respectively. Also shown are one or more imaging systems 282 coupled to antenna platform 314 and platform actuator 316 configured to rotate antenna 364, shielding 319, controller 320, OPS 190, and imaging systems 282 about axis 313, and sensing element (e.g., radar antenna) angle sensor 317 configured to measure an angle between an orientation of antenna 364 and a longitudinal axis of housing 311 (e.g., a vertical line passing perpendicularly through the antenna surface in the orientation shown in Fig. 3A). As shown in Fig. 3A, imaging systems 282 may be disposed within radar assembly 310 so as to capture imagery parallel to or antiparal lel to an active surface of antenna 364, may be aligned with a rotational axis 313 of radar assembly 310, may be and/or may be displaced laterally within the rotational plane of radar assembly 310, so as to provide synthetic stereo imagery, as described herein.
In some embodiments, radar antenna angle sensor 317 may be implemented as an optical sensor configured to monitor a position of platform actuator 316 and/or optically visible marks on platform actuator 316, for example, and derive the measured angle from the monitored position. In other embodiments, radar antenna angle sensor 317 may be configured to detect passage over one or more indexed posts 312 corresponding to a known orientation of -35 -antenna 364 relative to a longitudinal axis of housing 311. Controller 320 may be configured to receive a measured angle corresponding to a particular known relative orientation when radar antenna angle sensor 317 passes over the appropriate indexed post 312. In some embodiments. OPS 190 may include an embodiment of gyroscope/accelerometer 144 and one or more embodiments of GNSS 146 that can be configured to deteimine an absolute orientation and/or position of radar assembly 31(1.
For example, at a relatively low time resolution or update rate (e.g., 20Hz or less). UPS 190 and/or controller 220 may be configured to measure a phase modulation of a GNSS carrier signal caused by offset rotation about an axis, such as offset rotation of a GNSS receiver of UPS 190 about axis 313, which can change the distance of UPS 190 relative to a GNSS transmitter/ satellite substantially enough to measurably modulate the phase of the corresponding GNSS carrier signal. Based on one or more of the diameter of the offset rotation, the rotational frequency of the rotation, and the angle of the offset rotation relative to housing 311, coupled with the phase modulation and the known absolute position of the satellite (e.g., provided by the GNSS signal), remote sensing imagery system 300 may be configured to determine an absolute orientation and/or position of antenna 364, for example, at the relatively low time resolution. In addition, rotating UPS 190 through at least 180 degrees can help reduce multipath effects (e.g.. GNSS signal degradation), provided the period of rotation is fast relative to the rotation of the vessel about its yaw axis (e.g., at least 5 or 10 times as fast), and provided that the multipath effects are relatively constant over the rotational period of the antenna.
At the same time, and at a relatively high time resolution or update rate (e.g., greater than 30Hz), gyroscope/ accelerometer 144 of UPS 190 may be configured to provide measurements of angular and/or linear relative accelerations of UPS 190 (e.g., relative to a coordinate frame of UPS 190 and/or remote sensor system 300), which may be integrated to provide relative velocities of UPS 190, which may in turn be combined with absolute position and/or orientation measurements derived from sensor data provided by one or more GNSSs of UPS 190 to provide absolute positions and/or orientations of antenna 364 at the relatively high time resolution. In particular, the sensor data provided by the one or more GNSSs of UPS 190 may be used to reduce and/or eliminate bias and/or gain errors (accumulation drift) in the sensor data provided by gyroscope/accelerometer 144 of UPS 190, periodically at the relatively low time resolutions (e.g., typically 10-20Hz).
-36 -In various embodiments, gyroscope/accelerometer 144 of OPS 190 is disposed at or adjacent to rotational axis 313, and a single GNSS 146 of OPS 190 is disposed spaced apart from rotational axis 313 (e.g., at an opposing end of OPS 190) so as to generate a measurable phase modulation, as described herein. In some embodiments. OPS 190 may include an additional GNSS 146 one disposed at or adjacent to rotational axis 313, so as to provide a more precise instantaneous measurement of the position of antenna 364 and/or to increase the rate of the measurement of maximum phase modulation by a factor of 2 (e.g., where the two GNSSs swap relative orientation on a baseline -the line segment separating the two GNSSs).
Fig. 3B illustrates a diagram of a remote sensing imagery system 302 in accordance with an embodiment of the disclosure. In the embodiment shown in Fig. 3B, remote sensing imagery system 302 is implemented as a boom radar system including a boom radar assembly 310, housing 311, and radar antenna 364 shielded from system controller 320 and OPS 190 (e.g., GNSSs 146a-c, orientation sensor 140, and gyroscope/accelerometer 144) by shielding 319, which correspond to and/or may be implemented similarly to remote sensing assembly 1 5 210, housing 211, sensing element 264, controller 220, OPS 190, and shielding 219 of Fig. 2, respectively. Also shown are imaging system 282, radar pedestal/mast bracket 382 (e.g., encompassing antenna platform 314 and platform actuator 316) configured to support and rotate antenna 364, shielding 319, controller 320. OPS 190, and imaging system 282 about axis 313, and sensing element (e.g., radar antenna) angle sensor 317 configured to measure an 2 0 angle between an orientation of antenna 364 and a longitudinal axis of housing 311 (e.g., a vertical line passing perpendicularly through the antenna surface -away from the face of the page -in the orientation shown in Fig. 3B). In various embodiments, radar antenna angle sensor 317 may be configured to monitor a position of platform actuator 316 and/or antenna platform 314, for example, and derive the measured angle from the monitored position.
As shown in Fig. 3B, OPS 190 may include one, two, or three GNSSs 146a-c, so as to select a particular baseline length between the GNSSs so as to reduce intrinsic absolute orientation errors, as described herein. In some embodiments. OPS 190 of system 302 may be implemented with 2 GNSSs at opposing ends of antenna 364, for example, so as to minimize the intrinsic absolute orientation error. In other embodiments, a minimum baseline length (e.g., 0.5m) may be used for multiple different embodiments of boom radar assembly 310 (e.g., with different antenna boom widths) so as to standardize the error and/or calculation of absolute orientations across a range of boom radar assemblies 310 with varying antenna boom -37 -widths. In a particular embodiment. OPS 190 may include a first GNSS 146b disposed at or adjacent rotation axis 313 of boom radar assembly 310 and a second GNSS (e.g., GNSS 146a or 146c) disposed a preselected baseline distance away from GNSS 146b towards one end of boom radar assembly 310 (e.g., to standardize the intrinsic absolute orientation error), for example, or disposed at one end of boom radar assembly 310 (e.g., to minimize the intrinsic absolute orientation error).
Fig. 3C illustrates a diagram of a remote sensing imagery system 304 in accordance with an embodiment of the disclosure. In the embodiment shown in Fig. 3C, remote sensing imagery system 304 is implemented as a boom radar system including a boom radar assembly 310, housing 311, and radar antenna 364 shielded from system controller 320 and OPS 190 by shielding 319, alone with imaging system 282. Also shown is radar pedestal/mast bracket 382 (e.g., encompassing antenna platform 314 and platform actuator 316) configured to support and rotate antenna 364, shielding 319, controller 320, OPS 190, and imaging system 282 about axis 313. In some embodiments, imaging system 282 may be disposed so as to 1 5 view a direction parallel to or opposite an active surface of antenna 364.
In various embodiments, imaging system 282 may include one or more imaging modules, which may be arranged to provide panoramic imagery, stereo imagery, synthetic stereo imagery, and/or vertical stereo imagery, as described herein.
There are a number of types of imaging module arrangements that can achieve the goal of producing a panoramic image that is aligned with the radar data One primary requirement is that the imaging scan lines are parallel with the axis 313 of rotation of radar assembly 310. For a single line imaging module/camera, this requires the scan line to be oriented in the vertical direction. For a 2D camera either of the sensor axes can be used; the choice may be based on the way that the imaging module schedules the scan, conventionally 2 5 this can be top to bottom, so the camera would be oriented to minimize the rolling shutter effect.
All imaging modules will suffer from blur due to the imaging module motion and the effective shutter speed, but line imaging modules have the lowest amount of blur, and in thermal imaging modules the motion blur is more readily compensated for because there are multiple captures of the same part of the scene in the different scan lines.
-38 -A rotating line imaging module may be implemented as a digital camera that uses a linear CCD array to assemble a digital image as the camera rotates. In some embodiments, the CCD array may be implemented by three sensor lines, one for each RGB color channel. Advanced rotating line imaging modules may have multiple linear CCD arrays on the focal plane and may capture multiple panoramic images during their rotation Line-scan technology is capable of capturing data extremely fast and at very high image resolutions. Usually under such conditions, resulting accumulated image data can exceed 100 MB in a fraction of a second. Line-scan-camera-based integrated systems are therefore usually designed to streamline the imaging module's output in order to meet the system's objective, using inexpensive computer technology. The primary advantage of the line scan imaging module is the speed at which the data is captured; being fast there is very little motion blur, but for the same reason the sensitivity can be poor, and line scan imaging modules tend to be expensive compared with 2D imaging modules because of the optimization necessary to get the fast acquisition times.
1 5 A 2D imaging module offers the opportunity to leverage the overlapping nature of the image data to obtain some processing gain and therefore some increased sensitivity relative to a single scan line imaging module. This is beneficial for good range performance and operation in poor light conditions. A downside is the longer integration time and therefore the longer shutter time (e.g., time between frame captures), particularly for infrared cameras, which have longer integration times than visible spectrum light cameras. The result can be significant blurring in captured images. One method of mitigation is panoramic image construction, based on images captured by a rotating imager, which takes multiple overlapping images and applies image processing techniques to denoise, frame align and stitch, roller shutter compensate, and motion &blur. Such methods sometimes rely on the 2 5 rotating imaging module being mounted to a fixed position, and so additional processing may be needed to compensate for roll, pitch, and yaw of a mobile platform, such as a boat or ship.
It is often advantageous to mount a visible spectrum imaging module and an infrared imaging module next to each other and use video blending techniques to combine the resulting captures thermal and visible image data This offers the advantages of a color representation of the environment and the ability to sec structure and detail in very poor or no light conditions.
-39 -Placing 2 imaging modules at a set distance apart provides the opportunity of using stereo imaging techniques to generate 3D information based on optical data (e.g., optical ranging sensor data). This 3D information can be augmented by radar data. A 3D representation of the surrounding environment provides additional information that can be used for navigation and assisted or automated docking.
An alternative to using 2 imaging modules for stereo imaging, and therefore presenting a relatively inexpensive option, is to exploit a mounting arrangement, where the imaging module(s) are mounted displaced laterally from rotation axis 313, similar to that shown in the placement of lower imaging system 282 in Fig. 3A. For an imaging module that 1 0 is mounted off center, as the imaging module rotates it is effectively translated around the circumference of a circle, that is defined by the distance of the objective lens from die center of rotation. Multiple images from the imaging module will overlap by an amount defined by the rotation speed, the frame rate, and the horizontal field of view, and the overlapping images will be taken from slightly different positions on the circumference of the circle. This 1 5 technique, referred to herein as pseudo-stereo imaging, provides a mechanism for generating a 3D representation of the surrounding environment with a single camera because the overlapping images are taken from slightly different perspectives. Such data can be further enhanced by using the information from the radar, which provides range and bearing to targets.
2 0 Embodiments with a single imaging module have limited vertical discrimination because the translation is only in the horizontal plane. To provide more accuracy in the vertical plane, two imaging modules can be mounted to and/or within radar assembly 310 such that they are separated vertically and operated in a stereo fashion (e.g., referred to herein as vertical or slew stereo imaging). The combination of lateral displacement from rotation axis 313 and fixed vertical separation provides the ability to generate accurate 3D data from optical imagery Fig. 3D illustrates a diagram of vertical or slew stereo imaging system 282 colocated within remote sensing assembly 310 for remote sensing imagery system 200 in accordance with an embodiment of the disclosure. As shown in Fig. 3D, vertical or slew imaging system 282 include a first imaging module 282a disposed above a second imaging module 282b, with both imaging modules 282a,b displaced laterally from rotation axis 313 of radar assembly 310, so as to generate 3D optical data of the environment about mobile structure 101 (e.g., a combination of image data captured by imaging modules 282a,b as they -40 -are rotated about rotation axis 313 to capture successive frames 1-4, synchronously. As an example, with a 6014z frame rate for imaging modules 282a,b, a rotation speed of 24rpm, and a 45° camera field of view, the step angle = 24ipm * 3600/(60 * 60Hz) = 2.4°, and the number of overlapping frames = 45/2.4 = 18.75 (number of vertical stereo images captured during a revolution of radar assembly 310.
As discussed herein, panoramic image generation processing becomes more complicated when performed from a mobile platform. For example, it cannot be assumed that successive frames will be aligned vertically and that the step angles between frames will be linear. The wind effect on radar assembly 310 can cause minor changes in the speed of rotation due to the aspect of antenna 364 to the wind direction during rotation, where antenna 364 when at broadside to the wind will be slower than when end on to the wind. For low cost radars that use a heading indicator and an assumption of the angle based on rotation speeds, motion errors can be introduced into the processing. Some of this can be compensated for in the processing, such as by the use of block matching areas between frames, but a better approach is to incorporate an angular encoder, such as that described with respect to Fig. 7, and/or accurate control of actuator 316 motivating the rotation. This helps ensure that image and radar data are angularly aligned but will not necessarily correct for the direction of the camera and radar in world coordinates because of the platform yaw, which means that not only may the panning speed change but the scene may be moving as well.
To mitigate this issue. OPS 190 can be included within radar assembly 310 to provide metadata for the rate of turn, attitude, and heading of radar assembly 310 (and any image data captured by imaging system 282), which may include a GNSS compass system, as described herein. In addition, roll and pitch of mobile structure 101 effect the vertical direction that imaging system 282 and radar antenna 364 are pointing, but such motion can be compensated for using OPS 190 to provide digital vertical stabilization and correction.
Fig. 4A illustrates a diagram of a remote sensing imagery system 400 in accordance with an embodiment of the disclosure. As shown in Fig. 4A, system 400 includes mobile structure 101 with radar assembly 310 and OPS 190 being disturbed by water 441 as it travels with a certain speed through water 442 over water 441 and emits radar beams 462 towards, and receives radar returns 463 from, target 464. Errors in the calculation of a radial speed are intrinsic in the dynamics and geometry of system 100 due to roll, pitch, and yaw of mobile -41 -structure 101. For example, the pitch angle 443 of mobile structure 101 varies as mobile structure 101 hits a wave, and radar assembly 310 and OPS 190 accelerate as they pitch about center of mass 444 of mobile structure 101. The various velocities (e.g., Doppler velocity, velocity of mobile structure 101, in terms of COG and SOG) measured by radar assembly 310 and OPS 190 are generally not the same unless they are co-sited and synchronized.
A GNSS compass is a special case of a moving baseline where the linear separation of the two receivers (or one receiver at 180 degree rotational displacements) is fixed but their relative orientation varies cyclically at a substantially known rate of for example 24RPM or 48RPM. The GNSS update rate (e.g., -10Hz -18 or 20HZ) is inadequate to cater for the more extreme changes observed in mobile trials. For example, Fig. 4B illustrates a graph 401 of typical yaw rates experienced by remote sensing imagery system 400 in accordance with an embodiment of the disclosure. In graph 401, the unintentional yaw rate due to wave motion was measured as follows: the horizontal axis is seconds and the vertical axis is degrees per second. As can be seen in Fig. 4B, the yaw motion up to 250 seconds was unintentional and peaked at. +/-10 degrees/second, with very fast rise and fall times. Sampling this at 10Hz with a potential 0.1 second latency is likely to miss or misplace the peaks. An update rate for gyroscope/accelerometer 144 of OPS 190 can be much higher, easily a factor of 10 higher, but is subject to accumulation error in the form of bias and gain drift across an integration period. A GNSS compass may be used to correct the bias and drift periodically and often enough so that the accumulation error stays well below the typical errors caused by system latency and asynchronous measurements by sensors not mounted directly to radar assembly 310. For example, a common specification for an inexpensive gyroscope/accelerometer 144 may be +115 degrees/second when set for 500deg/sec full scale. The bias can be corrected at 10Hz using the GNSS compass, reducing the error to the rate of change of the bias.
2 5 Fig. 4C illustrates a diagram 402 showing a technique to determine a radial velocity for remote sensing imagery system 100 in accordance with an embodiment of the disclosure. In particular, diagram 4C shows reference direction/True North 106, heading 102 (thetaHD) for mobile structure 101/radar assembly 310 relative to reference direction 106, and radar beams 462 and radar returns 463 transmitted/reflected between radar assembly 310 and target 464 along the direction of absolute radial velocity 474 of radar assembly 310 (Vant) -the absolute orientation of radar antenna 364 at the time depicted in Fig. 4C. Also shown in diagram 402 are radar assembly absolute velocity 473 (Vg) (e.g., the SOG for rotation axis -42 - 313 of radar assembly 310 along traveling azimuth 472 lthetaCS1 in polar coordinates -often the same for mobile structure 101 when pitch and roll are ignored), antenna relative orientation 475 (e.g., thetaANT, relative to a heading of mobile structure 101), and angle 476 (phi) between mobile structure absolute velocity 473 and absolute antenna radial velocity 474.
In various embodiments, mobile structure absolute velocity 473 may not be aligned with heading 102 due to a course disturbance (e.g., caused by tidal set and drift and/or crosswind effects), and so traveling azimuth 472 is not always the same as heading 102. In some embodiments, the numerical difference heading 102-traveling azimuth 472 may be referred to as a heading correction.
Conventionally, various relative measures of bearings, velocities, and antenna angles and needed to determine Vant, each of which contribute error to the determination. For example, in some embodiments, the antenna radial velocity may be computed from: Vant=IVgrcos(thetaANT+(thetaHD-thetaCS)); Where thetaHD-thetaCS is the heading correction, the,taANT is the azimuth of a radar antenna of radar assembly 310 (e.g., a relative orientation of the radar antenna relative to longitudinal axis/heading 102 of mobile structure 101, provided by radar antenna angle sensor 317), SOG is the SOG of mobile structure 101 and/or radar assembly 310, and Vant is the radial velocity of radar assembly 310 and/or a radar antenna of radar assembly 310 (e.g., the absolute speed/SOG of radar assembly 310 in the direction towards target 464, or the component of the SOG of mobile structure 101/radar assembly 310 in the direction towards target 464). In practice, determining the heading correction (e.g., thetaHD-thetaCS) may require detecting if they lie on either side of North (e.g., zero degrees) and correcting the result as follows (pseudocode): If(thetaHD-thetaCS)<-180 then(thetaHD-thetaCS)=( thetaHD-thetaCS)+360; else 11(thetaHD-thetaCS)>180 then(thetaHD-thetaCS)=( thetaHD-thetaCS)-360; end; Where thetaHD and thetaCS 0 to 360 are in degrees relative to North.
As described herein, radar antenna angle sensor 317 is internal to radar assembly 310 and has a zero error of typically +/-1 degree as it is performed as a user calibration from observing the radar return from a known target. This is necessary as the radar apparatus can be fitted rotated at an arbitrary angle relative to the fore-aft line of mobile structure 101. In -43 -addition, a non-linearity of +/-1 degree would be typical clue to errors in low-cost sensors. The resolution is typically much higher, and latency is low as it is internal to the radar, so the sensor data is not delayed. Other sensors that are external to radar assembly 310 have relatively large static and dynamic errors as discussed herein. For example, when disposed external to radar assembly 310, the expected latency can be at or above 100ms, and the thetaHD measurement errors may be expected to exceed +/-5 deuces, on top of the latency errors and +/-7.5 degrees of error attributable to yaw rate. Even for small heading corrections, the error can propagate to 10% or more of the SOG of mobile structure 101, which renders the radar sensor data too imprecise to generate reliable target radial speeds and/or velocity spectrums/distributions, which forecloses types of target identification and classification techniques, particularly natural environment target identification and classification, as described herein.
Embodiments avoid all such errors by integrating OPS 190 including both embodiments of gyroscope/accelerometer 144 and embodiments of GNSS 146 and using them to measure the orientation and position of radar assembly directly, in a manner that takes advantage of the relatively high update rates and short term precision achievable by inexpensive embodiments of gyroscope/accelerometer 144 and the relatively slow update rate but long term reliable absolute orientation and position measurements achievable by inexpensive embodiments of GNSS 146. In various embodiments, a Doppler velocity of 2 0 target 464 may be determined based, at least in part, on the pulse transmission wavelength and pulse transmission interval (PRI) of transmitted radar beams and the characteristics of radar returns reflected from tat-get 464, where the pulse characteristics are used to determine wavelength and phase shifts in the radar returns that indicate the Doppler velocity of target 464 and/or Doppler velocity spectrum of different portions of target 464.
In various embodiments, OPS 190 may include a 3 axis embodiment of gyroscope/accelerometer 144 and a 3 axis magnetometer (e.2., orientation sensor 140). Such magnetometer suffers from the intrinsic errors noted herein, and so embodiments employ a rotating GNSS compass to provide VG and VANT directly, as discussed herein. The update rate of the GNSS compass is typically 1014z and is inadequate as theta (the absolute version of thetaANT) changes too quickly. A 3-axis gyroscope/accelerometer 144 may be used to provide the instantaneous value of theta about the axis of rotation 313 of radar assembly 310, which is positioned to be approximately parallel with one of the three axes. The drift and bias -44 -of gyroscope/accelerometer 144 may be compensated for by the average rate of rotation of the antenna (e.g. 24RPM) and the GNSS/GNSS compass measurements.
Jr various embodiments, radar antenna angle sensor 317 is not required for the calculation of VANT. In practice it is useful to use ThetaANT and VG to determine thctaHD, which can be passed to other equipment on the vessel that might want to use it for example for display or to provide a Head-Up radar picture, where the vessels fore-aft line is drawn on the y axis of the display with the bow towards the top of the screen. TfietaANT can be used alone to produce a Head-Up radar picture (PPI) in the event of failure of any of the other sensors or areas in denial of the GNSS signal. In some embodiments, the Head-Up PPI can 1 0 be rotated to produce a North-Up PPI, using a thetaHD sensor and a sensor for thetaANT (typically a rotary shaft encoder). Embodiments described herein may produce a North-Up PPI that can be rotated to produce a Head-Up PPI without need of additional sensors.
Passing data from OPS 190 to controller 320 can be achieved in several ways. For example, by using sliprings or wireless transmission. The latency needs to be kept low so that the signals received during one PRI can be phase corrected before the next pulse. One approach is to integrate controller 320 with radar assembly 310, as described herein. The latency of the data after phase correction (e.g.. Doppler velocity determination and/or absolute radial target velocity determination) can be much greater, if the corrected data is buffered in controller 320, for example a quarter of a revolution or 0.625 seconds if the antenna rotates at 24 RPM. The transmission can then be made using higher latency methods such as Ethernet or Wi-Fi.
Figs. 4D-E illustrate display views 403 and 404 generated by remote sensing imagery systems 100, 200, 300, and/or 400 in accordance with an embodiment of the disclosure. In Fig. 4D, display view 403 shows a center graphic identifying a position of mobile structure 101/radar assembly 310 surrounded by radar image data corresponding to a number of detected targets. Also shown are heading 102, COG 472, and corresponding navigation data 480, which includes numerical values for heading 102, COG 472, and an SOG for mobile structure 101. As can be seen in display view 403, a number of targets 482 are shaded red to indicate that they are approaching mobile structure 101 with target radial speeds (e.g., magnitudes) greater than or equal to an applicable target speed threshold. Also, a target 484 is shaded green to indicate that it is receding from mobile structure 101 with a target radial -45 -speed (e.g., magnitude) greater than the applicable target speed threshold, and targets 483 are unshaded (e.g., greyscale) to indicate that their corresponding target radial speeds (e.g., magnitudes) are less than the applicable target speed threshold. In various embodiments, systems 100, 200, 300, and/or 400 may be configured to apply any number of different graphics characteristics to differentiate such groupings of targets within display view 403.
In Fig. 4E, display view 404 shows how such shading can become unreliable if the calculation of the target radial speed is more susceptible to noise and/or error in orientation and/or position data (e.g., provided by OPS 190) and/or does not properly compensate for course disturbances (e.g., wind and/or tide). As can be seen in navigational data 480, the SOG of mobile structure 101 is less than half that of the SOG of mobile structure 101 in display view 403, and the corresponding uncorrected heading correction and deceleration of mobile structure 101 (e.g., with concomitant pitch forward about lateral axis 103) has resulted in much of the land mass targets surrounding mobile structure 101 being incorrectly identified as approaching (e.g., targets 486) or receding from (e.g., targets 488) mobile structure 101 with target radial speeds greater than the target speed threshold. Similar motion errors can introduce a corresponding rotational offset error to all radar image data generated by remote sensing imagery system 200, for example, and can cause remote sensing imagery system 200 to miss-identify and/or characterize navigational hazards and/or other targets approaching or receding from mobile structure 101.
Fig. 5 illustrates a flow diagram of process 500 to provide remote sensing data and/or imagery for mobile structure 101 in accordance with embodiments of the disclosure. In some embodiments, the operations of Fig. 5 may be implemented as software instructions executed by one or more logic devices associated with corresponding electronic devices, sensors, and/or structures depicted in Figs. 1A through 4E. More generally, the operations of Fig. 5 may be implemented with any combination of software instructions and/or electronic hardware (e.g., inductors, capacitors, amplifiers actuators, or other analog and/or digital components).
It should be appreciated that any step, sub-step, sub-process, or block of process 500 may be performed in an order or arrangement different from the embodiments illustrated by 30 Fig. 5. For example, in other embodiments, one or more blocks may be omitted from or added to the process. Furthermore, block inputs, block outputs, various sensor signals, sensor -46 -information, calibration parameters, and/or other operational parameters may be stored to one or more memories prior to moving to a following portion of a corresponding process. Although process 500 is described with reference to systems described in Figs. 1A-4E, process 500 may be performed by other systems different from those systems and including a different selection of electronic devices, sensors, assemblies, mobile structures and/or mobile structure attributes.
Process 500 represents a method for providing remote sensing data and/or imagery using systems 100, 100B, 200, 300, 302, and/or 400 in accordance with embodiments of the disclosure. At the initiation of process 500, various system parameters may be populated by prior execution of a process similar to process 500, for example, or may be initialized to zero and/or one or more values corresponding to typical, stored, and/or learned values derived from past operation of process 500, as described herein.
In block 502, a logic device transmits remote sensor beams. For example, controller 130 of system 100, controller 220 of system 200, and/or controller 320 of system 300 or 302 may be configured to transmit sonar (acoustic) beams, radar beams, and/or other remote sensor beams from surface 212 using transceiver 234 and sensing element 264. In some embodiments, controllers 130, 220, and/or 320 may be configured to receive sensor transmission orientation and/or position data (e g from one or more OPSs 190) and/or image data (e.g., from imaging system 282) corresponding to the transmitted beams, for example, for further processing. In other embodiments, controllers 130, 220, and/or 320 may be configured to receive a desired orientation, position, and/or angular frequency (e.g., an absolute angular frequency) for motion of sensing element 264, as user input from user interface 120 for example, and be configured to control a corresponding actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing element 264 prior to transmitting the remote sensor beams. In such embodiments, controllers 130, 220, and/or 320 may be configured to receive adjusted sensor transmission orientation and/or position data from UPS 190 piior to proceeding to block 504.
In block 504, a logic device receives remote sensor returns corresponding to a detected target. For example, controllers 130, 220, and/or 320 may be configured to receive remote sensor returns from sensing element 264 and/or transceiver 234 (e.g., remote sensing assembly 210) and, in some embodiments, substantially at the same time, receive orientation -47 -and/or position data from UPS 190, for example, and/or image data from imaging system 282. In some embodiments, controllers 130, 220, and/or 320 may be configured to receive a desired orientation, position, and/or angular frequency from user interface 120 and be configured to control a corresponding actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing element 264 prior to or while receiving the remote sensor returns, then receiving, with the remote sensor returns, adjusted sensor return orientation and/or position data from UPS 190.
In embodiments where remote sensor assembly 210 comprises a radar assembly (e.g., radar assembly 310), actuator 316 may be configured to rotate radar antenna 364. UPS 190, and/or imaging system 282 about axis 313 of radar assembly 310 while the remote sensor returns are received by controllers 130, 220, and/or 320. In one such embodiment, controllers 130, 220, and/or 320 may be configured to control actuator 316 to rotate radar antenna 364 and/or UPS 190 according to the desired angular frequency relative to an absolute coordinate frame using absolute sensor return orientation and/or position data provided, at least in part, by UPS 190 (e.g., such as when UPS 190 includes a magnetometer capable of measuring Magnetic North and/or a GNSS compass). In various embodiments, UPS 190 may include one or more of accelerometer/gyroscope 144, GNSS 146, and/or orientation sensor 140 (e.g., a magnetometer, a float level, a compass, and/or other orientation sensing device adapted to measure the orientation and/or position of sensing element 264 during motion of sensing clement 264, remote sensor assembly 210, and/or mobile structure 101).
In various embodiments, controllers 130, 220, and/or 320 may be configured to calibrate and/or align the various sensors of UPS 190 by receiving the remote sensor returns and corresponding sensor return orientation and/or position data from UPS 190 and/or image data from imaging system 282 during motion of remote sensing assembly 210, sensing element 264, and/or mobile structure 101, and calibrating and/or aligning one or more coordinate frames of UPS 190 with respect to each other, with respect to an absolute coordinate frame, and/or with respect to a coordinate frame of mobile structure 101, using remote sensor returns, image data, and/or the sensor return orientation and/or position data, as described herein. For example, sensors with relatively good long-term stability may be used to remove sensor drift in data from sensors with relatively poor long-term stability, and sensors with relatively good short-term stability maybe used to remove short term errors or -48 -transients in data from sensors with relatively poor short-term stability. Such calibration processes can occur substantially in parallel with other steps in process 500.
In block 506, a logic device determines a target radial speed corresponding to a detected target. For example, controllers 130, 220, and/or 320 may be configured to determine a target radial speed corresponding to target 464 detected in block 504 based, at least in pail, on the radar returns received in block 504 and orientation and/or position data corresponding to the radar returns, radar assembly 310, and/or mobile structure 101 (e.g., provided by one or more OPSs 190).
In some embodiments, controllers 130, 220, and/or 320 may be configured to determine a target radial speed (e.g., singular, across the cross section of the target as presented to radar assembly 310, or plural, as a distribution or spectrum of speeds across the cross section of the target) by determining a Doppler velocity (e.g., velocity and/or velocity spectrum or element of a velocity spectrum) of target 464 based on the radar returns, determining a radial velocity of radar assembly 310 and/or a radar antenna of radar assembly 310, corresponding to the determined Doppler velocity of target 464, based on the orientation and/or position data corresponding to radar assembly 310 and/or mobile structure 101, and determining a difference between the Doppler velocity of target 464 and the radial velocity of radar assembly 310 and/or a radar antenna of radar assembly 310.
In some embodiments, the determining the radial velocity of radar assembly 310 may include determining an absolute velocity of radar assembly 310 based, at least in part, on the orientation and/or position data corresponding to the radar returns received in block 504 and/or radar assembly 310, determining an absolute orientation of antenna 364 of radar assembly 310 based, at least in part, on the orientation and/or position data corresponding to the radar returns received in block 504 and/or radar assembly 310, and determining a 2 5 component of the absolute velocity of radar assembly 310 in the direction of the absolute orientation of antenna 364 of radar assembly 310 based, at least in part, on the absolute velocity of radar assembly 310 and the absolute orientation of antenna 364 of radar assembly 310.
In block 508, a logic device generates remote sensor image data based on remote sensor returns, target radial speeds, and adaptive target speed thresholds. For example, controllers 130, 220, and/or 320 may be configured to generate remote sensor image data -49 -based, at least in part, on the remote sensor returns, target radial speeds, and adaptive target speed thresholds received and/or determined in blocks 504-506. In particular embodiments, the generating the radar image data includes selectively applying a first graphics characteristic (e.g., a shading color or other graphics characteristic) to radar image data corresponding to a detected target when the target radial speed corresponding to the detected target is positive (e.g., receding targets) and greater than or equal to an adaptive target speed threshold, and/or selectively applying a second graphics characteristic to the radar image data corresponding to the detected target when the target radial speed corresponding to the detected target is negative (e.g., approaching targets) and its magnitude is greater than or equal to a target speed threshold, for example.
In embodiments where controllers 130, 220, and/or 320 are configured to control an actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing element 264 (e.g., in blocks 502 and/or 504) prior to or during transmission of remote sensor beams and/or remote sensor returns, controllers 130, 220, and/or 320 may also be configured to generate the remote sensor image data based, at least in part, on the remote sensor returns and adjusted orientation and/or position data received in block 504, and/or on adjusted or unadjusted sensor transmission orientation and/or position data received in block 502.
As in block 504, in various embodiments, controllers 130, 220, and/or 320 may be configured to calibrate and/or align the various sensors of OPS 190 by receiving the remote sensor returns and corresponding sensor return orientation and/or position data from OPS 190 during motion of remote sensing assembly 210, sensing element 264, and/or mobile structure 101. However, such calibration process can now take advantage of the additional remote sensor image data generated in this block 510. Therefore, in some embodiments, controllers 130, 220, and/or 320 may be configured to calibrate and/or align one or more coordinate frames of OPS 190 with respect to each other, with respect to an absolute coordinate frame, and/or with respect to a coordinate frame of mobile structure 101, using remote sensor returns and/or orientation and/or position data, as described herein. As noted in block 504, such calibration processes can occur substantially in parallel with various other steps in process 500 if the various data are available.
In block 510, a logic device renders remote sensor image data. For example, controllers 130, 220, and/or 320 may be configured to render the remote sensor image data -50 -generated in block 508 using a display of user interface 120. In some embodiments, the rendered remote sensor image data may be referenced to an absolute coordinate frame (e.g., North-up) and/or a coordinate frame of the mobile structure (e.g., heading or course-up). In various embodiments, controllers 130, 220, and/or 320 may be configured to receive sensing element angle measurements from a sensing element angle sensor (e.g., sensing element angle sensor 317), so as to measure and/or compensate for an offset angle of the remote sensor assembly, for example.
In such embodiments, controllers 130, 220, and/or 320 may be configured to determine the absolute coordinate frame display reference and/or the coordinate frame of the mobile structure display reference (e.g., both of which can require determination of the offset angle) based, at least in part, on the sensing element angle measurements and/or GNSS data provided by OPS 190. For example, in sonic embodiments, a time series of GNSS data may be used to measure SOG. COG, and/or track for mobile structure 101.
In further embodiments, image data, position data, orientation data, and/or remote sensor data acquired and/or processed in blocks 502-512 may be used to control operation of mobile structure 101, such as by controlling steering sensor/actuator 150 and/or propulsion system 170 to steer mobile structure 101 according to a desired heading, track, one or more waypoints, a tide or wind effect, and/or other types of user and/or environmental input.
It is contemplated that any one or combination of methods to provide remote sensing imagery may be performed according to one or more operating contexts of a control loop, for example, such as a startup, learning, running, and/or other type operating context. For example, process 500 may proceed back to block 502 and proceed through process 500 again to produce updated remote sensor system imagery, as in a control loop.
Embodiments of the present disclosure can thus provide accurate and reliable remote 2 5 sensing data and/or imagery. Such embodiments may be used to provide sonar, radar, and/or other remote sensing imagery to assist in navigation for a mobile structure, survey of a body of water, and/or to assist in the operation of other systems, devices, and/or sensors coupled to the mobile structure.
It is possible to use convolutional neural network (CNN) based deep learning to detect and classify objects in a video panorama. For example, embodiments described herein may be configured to use any of the deep learning systems and/or techniques described in U.S. -51 -Provisional Patent Application No. 62/947,422 filed December 12, 2019 and entitled " DEEP LEARNING-BASED MARINE OBJECT CLASSIFICATION USING 360-DEGREE IMAGES". In some embodiments, similar techniques may be used to detect and classify targets in radar and image data, including stereo image data, pseudo stereo image data, and vertical or slew stereo image data, as described herein, and offer better target detection than video based systems alone. Once detected the target can be tracked using both video and radar and highlighted on a display.
In a point and shoot mode, embodiments employing radar and imaging may be instructed by an operator or by a tracking refinement algorithm that is tracking targets to 1 0 concentrate on a particular point in the 360 view of radar assembly 310. For example, this can be effected by showing the particular sector on a display view or by controlling physical rotation of radar assembly 310 and halting rotation at the specified absolute orientation. A second method requires an actuator arrangement that can support this type of movement. Similar to the point and shoot mode, a slew to cue mode concentrates on a particular sector, either in a display view or by physically moving radar assembly 310.
Figs. 6A-F illustrate various display views generated by remote sensing imagery system 200 in accordance with embodiments of the disclosure. Such display views may include a video stream shown over or above radar imagery, for example, or a video stream field of view indicated on the radar imagery. Such display views may facilitate object 2 0 selection that is synced between video and radar imagery, and video and radar imagery can be panned by selector dragging (e.g., either the Radar i magery/PPI rotates, or a video stream field of view indicator rotates). In some embodiments, a video stream can slew-to-cue automatically when a dangerous target is detected and identified, as described herein.
For example, Fig. 6A shows display view 600 including optical video stream/panorama image data 610 disposed above radar image data/radar PPI 620. As shown in Fig. 6A, radar PPT 620 and panorama image data 610 (e.g., corresponding to radar PPI 620 and/or a panoramic view about mobile structure 101 and/or radar assembly 310) may include a variety of simultaneously presented targets, including optical target 612 corresponding to radar target 622. In some embodiments, radar PPI 620 may be rendered with a field of view (FoV) indicator overlay 621 configured to indicate the horizontal extent of the FoV 611 of panorama image data 610, as represented in radar PPI 620. In some embodiments, display -52 -view 600 may be rendered in a display of user interface 120, for example, and an operator may select various dements of display view 600 to manipulate how radar PPI 620 and panorama image data 610 are rendered within display view 600. For example, a user may select a portion of panorama image data 610 and apply a "pinch" gesture to narrow the display FoV of panorama image data 610 (e.g. the horizontal extent of panorama image data 610, for instance, or apply a "spread" gesture to widen the display FoV of panorama image data 610. FoV indicator overlay 621 may be rendered wider or narrower to indicate such change in the width of the FoV.
In various embodiments, system 100 may detect user selection of a target in one of either radar PPI 620 or panorama image data 610 (e.g., optical target 612 or radar target 622) and highlight the selected target within both radar PPI 620 and panorama image data 610, simultaneously, such as by rendering a highlight graphic over both optical target 612 and radar target 622. For example, Fig. 6B shows display view 601 including optical target highlight graphic 614 rendered as an overlay over optical target 612 and radar target highlight 1 5 graphic 624 rendered as an overlay over radar target 622.
In further embodiments, system 100 may be configured to slew panorama image data 610 to center on a selected and/or highlighted optical target upon selection of a corresponding optical or radar target. For example, Fig. 6C shows display view 602 including panorama image data 610 stewed to center on optical target highlight graphic 614 and/or optical target 2 0 612, with FoV indicator overlay 621 rendered to indicate the updated FoV of panorama image data 610, as represented in radar PPI 620.
In another embodiment, system 100 may be configured to detect user selection of a point within panorama image data 610 and a subsequent "drag" gesture, for example, and to change the direction of the FoV of panorama image data 610 based, at least in part, on the 2 5 length and direction of the drag gesture. For example, Fig. 6D shows display views 603-605 illustrating a procedural rendering associated with detection of such drag gesture. In display view 603, system 100 detects user manipulation of selector 630 to perform drag gesture 632 dragging panorama image data 610 to the left. System 100 may in some embodiments be configured to change the FoV of panorama image data 610 by rendering clockwise portions of a full 360 degree panorama image captured by imaging system 282, as defined by the length of drag gesture 632 through panorama image data 610, as shown. Such change in the -53 -direction of the FoV of panorama image data 610 may be indicated by a corresponding change in the orientation and/or solid angle of FoV indicator overlay 621 as rendered over radar PPI 620, as shown in display view 604. In other embodiments, system 100 may be configured to rotate radar PPI 620 to align with the reoriented FoV of panorama image data 610, as shown in display view 605 (e.g., where the orientation and/or solid angle of FoV indicator overlay 621 remains substantially static).
In a separate embodiment, system 100 may be configured to render portions of panorama image data 610 as picture in picture popup overlay windows graphically linked to corresponding radar targets identified within radar PPI 620. For example, Fig. 6E shows display view 606 including popup overlay windows 616 and 617 each including portions of panorama image data 610 associated with and/or depicting optical representations of corresponding radar targets 626 (e.g., a sailboat) and 627 (e.g., a pier). In related embodiments, such popup overlay windows may be configured to display panorama image data corresponding to a rear-view or backup camera view (e.g., for docking or for capturing fishing action at the stem of mobile structure 101. In various embodiments, system 100 may be configured to use CNN target detection, recognition, and/or classification techniques to identify optical targets depicted within such popup overlay windows, as shown in Fig. 6E and as described herein.
In an alternative embodiment, system 100 may be configured to render a full 360 degree version of panorama image data 610 (e.g., with a 360 degree FoV) in a circular band about a circular disk rendering of radar PPI 620, for example, within optional selection and windowing rendering options similar to those described herein with respect to Figs. 6A-6E.
Mechanically scanned remote sensor assemblies benefit from information about where a corresponding remote sensor (e.g.. antenna 364) is pointing at any moment in time. In the simplest approach. the orientation of the remote sensor relative to the center line of an underlying vessel may be determined, and an absolute orientation of the remote sensor may be derived based on a heading of the underlying vessel (e.g., provided by OPS 190). Conventional incremental encoders suffer from various errors associated with mechanical linkages, delayed index positioning (e.g., typically one direction out of the full 360 degree plane is indexed), and false detection of increments, which can lead to significant drift in the reported orientation as the remote sensor dwells in a range of orientations that do not include -54 -an indexed orientation. Conventional absolute encoders, including resolvers and optical multichannel sensors, suffer from similar debilitating disadvantages, such as significant complexity, weight, cost, and power draws, for example, and susceptibility to contamination rendering them unreliable or, in the worst case, inoperable.
Embodiments of radar antenna angle sensor 317 are presented herein that employ a type of absolute encoder that is robust, low cost, reliable in a wide variety of use cases, and precise enough to not contribute to the overall intrinsic error in measuring the orientation of remote sensor assembly 210 relative to an orientation of mobile structure 101, for example. In particular, radar antenna angle sensor 317 may be implemented as a magnetic rotary 1 0 position sensor configured to sense the orientation of an actuator or housing or remote sensor shaft. The magnetic rotary position sensor may include two hall effect sensors arranged to provide a differential measurement of the magnetic field of a permanent magnet (e.g., fixed to such shaft), which renders the magnetic rotary position sensor substantially immune to external magnetic fields and/or the influence of temperature changes.
For example, the magnetic field generated by a single pole pair magnet may be arranged relative to a magnetic field sensor so that the magnitude of the magnetic field is unique and does not repeat during a full 360 degrees of rotation of the permanent magnet which can be used to provide an absolute indication of a shaft angle without requiring the accumulation of counts, which would otherwise be lost when the encoder is not powered or the shaft is rotated while the system is not powered.
Fig. 7 illustrates an embodiment of angle sensor 317 for remote sensing imagery system 300, 302, and/or 304 in accordance with an embodiment of the disclosure. In Fig. 7, angle sensor 317 includes diametrically magnetized on-axis permanent magnet 710 and dual hall effect sensor 717. As can be seen by 3D plot 711, the orientation of the magnetic field 2 5 generated by the arrangement of north pole 712 and south pole 713 of permanent magnet 710 is completely determinable and non-repeating across measurement ellipse 714 when measured differentially by dual hall effect sensor 717 (e.g., when dual hall effect sensor 717 is aligned with and displaced axially from a rotational symmetry axis 715 of cylindrically shaped permanent magnet 710 -perpendicular to the flat surfaces of permanent magnet 710, as shown). Permanent magnet 710 may be fixed to a rotational shaft of radar assembly 310 (e.g., to actuator 316, or to a rotational shaft aligned with rotation axis 313) so as to rotate about its -55 -rotational symmetry axis 715, and dual hall effect sensor 717 may be placed centered and perpendicular to rotational symmetry axis 715 and in proximity to (e.g., typically within -3mm of) a flat surface of peimanent magnet 710, as shown.
In some embodiments, angle sensor 317 may be configured to provide a high-resolution 12-bit analogue or PWM output corresponding to the relative orientation of permanent magnet 710. Embodiments provide a contactless relative orientation measurement that is reliable and reproducible even when subjected to external stray magnetic fields. Calibration of angle sensor 317 can be performed during manufacture of radar assembly 310. A removable higher accuracy encoder can be connected to the same shaft, and differences between angle sensor 317 and the higher accuracy calibration encoder can be stored in non-volatile memory and used to correct raw orientation measurements provided by angle sensor 317. The calibration is of the zero position and non-linearities in the encoded orientations provided by of angle sensor 317, using the stored differences can improve the accuracy, but not the resolution of angle sensor 317. As shown in Fig. 7, and due in part to its contactless operation, angle sensor 317 may be used to sense orientations throughout 360 degrees of rotation or multiples thereof.
Various benefits accrue to angle sensor 317 as implemented in Fig. 7. For example, embodiments may sense both clockwise and counterclockwise rotations without backlash; are immune to dirt and dust and condensation without using seals; provide an absolute position sensor and does not require a once per revolution index pulse; are suitable for mechanisms that can operate over both full and only part of a revolution; are relatively immune to false detections due to interference, unlike an incremental encoder; are able to operate under a variety of otherwise detrimental environmental conditions (damp, heat, dust), unlike optical encoders; have a relatively wide operational temperature range: -40°C to 125°C; are lower cost than a 12 track optical absolute encoder; may be configured via automatic magnet detection to allow verification that a shaft (e.g., of radar antenna 364) is fitted correctly; presents relatively low power consumption; is relatively compact and lightweight; is relatively tolerant to misalignment and variable spacing between the parts; is contactless and therefore resistant to mechanical wear; presents an intrinsic non-linearity of +/-1 degree typical, deviation from best line fit; may be configured, via redundant die technology, to provide error detection or failure recovery; and can be configured to be relatively immune to stray magnetic fields.
-56 -Jr various embodiments, remote sensor imagery systems 100, 200, 300, 302, 304, and/or 400 may include collocated radar and camera or cameras, where both are rotated; may be configured to compensate for platform motion, such as through OPS 190, which may include a GNSS compass, as described herein. Embodiments may be configured to process radar data and image data provided by a colocated imaging system, which may include generating a panoramic image/view, and which may be enhanced to compensate for mobile platform movement, as described herein. Embodiments may also be configured to use a CNN applied to synchronized radar and image data to facilitate detection and classification of targets, for example, and may be configured to generate display views for displaying radar and corresponding image data together in a spatially and/or intuitively linked manner. For example, a panoramic image may be displayed around a radar PPI, or a portion of the panoramic image may be shown in proximity to the radar PPI, such as where the image portion is above (forward image), below (rear view) or both above and below the radar PPI. In some embodiments, portions of the panoramic image may be rendered as picture-in-picture 1 5 image windows overlaying the radar PPI.
In some embodiments, a video stream field of view may be indicated on the radar PPI, object selection may be synced between video and radar, the video stream may be panned by drag gestures and/or can slew-to-cue automatically when a dangerous target is detected and identified. Some embodiments may be configured to generate 3D imagery derived from 2 0 image date provided by a single single-scan or 2D imaging module, as described herein. Such 3D imagery may be enhanced using corresponding radar data. In some embodiments, two vertically separated imaging modules may be configured to provide improved vertical 3D resolution of such 3D imagery.
Jr various embodiments, remote sensing imagery system 100 may be used to detect wildlife feeding flocks (e.g., avian feeding flocks) within the sensing range of radar system 160. For example, when sea birds feed, they often form an avian feeding flock over a school of fish. The larger the school of fish, the larger the feeding flock. Fishermen can use this information to indicate a good location for fishing from a significant distance away from the school of fish, thus reducing the amount of time and effort expended to search for a good spot to fish. It is beneficial for fishermen to be able to detect avian feeding flocks at greater distances than is typically capable using visual techniques and to detect such remote feeding flocks with an automated system that can indicate the probability of a target being an avian -57 -feeding flock. Embodiments of remote sensing imagery system 100, implemented with a Doppler-capable radar system 160, can be configured to provide such feeding flock detection and present it to a pilot or user of mobile structure 101.
Conventional techniques that detect flocks of birds employ large-scale techniques to detect migrating birds or small-scale techniques (e.g., Micro-Doppler techniques) to detect individual birds and identify wing movements. Such lm-ge-scale techniques cannot reliably differentiate between migration and feeding, and such small-scale techniques typically require a dwell time in excess of a number of seconds, which is not possible using a rotating antenna. Moreover, such small-scale techniques often fail when more than one bird is present in a radar 1 0 beam at the same or similar range because of the interaction between the returns from the targets.
Techniques for feeding flock detection described herein benefit from the observation that when sea birds form a feeding flock over a fish school, the birds generally circulate around a central point located within the fish school. As such, embodiments of system 100 implemented with a Doppler-capable radar system 160 can be used to detect such circulation and classify a target as a feeding flock. Similar techniques may be used more generally for wildlife feeding flocks, including fish that may form underwater feeding flocks (e.g., using embodiments of sonar system 110).
Figs. 8A-B illustrate graphs of remote sensor beam characteristics and corresponding interactions with wildlife feeding flocks in accordance with embodiments of the disclosure.
For example, Fig. 8A illustrates the interaction between a radar beam 810 generated by a 6ft antenna operating in the X band and set to a maximum range of 1.5 nautical miles (e.g., generated by radar system 160) and a relatively large avian feeding flock 810 (e.g., 100m diameter) at a range of approximately 1 nautical mile (nm). As can be seen in Fig. 8A, avian feeding flock 810 is fairly sparse, with a target density of 0.01 targets/birds 822 per square meter (e.g., of beam swept surface area) and all targets rotating around a central point at velocities with a normal distribution of approximately 10m/s and an extent of +/-5m/s. Each target/bird 822 of feeding flock 820 is represented by a dot with a tail indicating the direction of travel.
In general, feeding flock 820 is sampled by radar beam 810 as radar assembly 310 of radar system 160/300/302/304 rotates, where each emitted radar beam 810 is associated with -58 -a processing width 812, and where a total sampled azimuthal width 814 (annotated as "convolved width") includes radar returns 824 from feeding flock 820 (annotated as -convolved response"). Fig. 8B shows the same interaction but where feeding flock 820 is centered at a range of lOnm and radar system 160 is set to a maximum range of 12nm.
In Fig. 8A, radar beam 810 is narrower than feeding flock 820, and in Fig. 8B, feeding flock 820 is narrower than radar beam 810; this shows there are generally two operational cases to cope with. For case 1, radar beam 810 samples feeding flock 820 in multiple sectors, while case 2, the whole of feeding flock 820 is sampled at once. Techniques described herein reliably detect feeding flocks under both conditions and all transitions between these operational cases.
For example, Figs. 9A-D illustrate various display views generated by remote sensing imagery system 100 receiving radar returns associated with wildlife feeding flock 820, where the azimuthal cross section of feeding flock 820 (e.g., the maximum azimuthal width of feeding flock 820, in the frame of radar system 160) is narrower than a corresponding remote sensor beam width of radar beam 820, in accordance with an embodiment of the disclosure.
More generally, Figs. 9A-D illustrate the long-range case where feeding flock 820 is completely contained within the emission extents of radar beam 820.
In particular, display view 900 of Fig. 9A shows the magnitude of the remote sensor returns (e.g., including remote sensor returns 912 associated with feeding flock 820) plotted 2 0 against range and angle/azimuth, with the gain of radar system 160 set so that the background noise is detected and rendered within display view 900. For reference, box 910 indicates the actual size/azimuthal width of feeding flock 820. Display view 902 of Fig. 9B shows velocity profile 914 (e.g., Doppler-derived velocity profile) corresponding to remote sensor returns 912 associated with feeding flock 820, along with velocities of background noise. In some embodiments, velocity profile 914 may be determined using a pulse-pair technique, which may he configured to indicate the instantaneous radial component of the velocity (towards or away from radar system 160) at the time each sample was taken/each radar return was received. Display view 902 may be enhanced/filtered/ processed so that the velocities of the background noise are deemphasized for clarity.
Display view 904 of Fig. 9C shows an azimuth-segmented velocity spectrum 916 corresponding to a portion of velocity profile 914 sampled along a central angle (e.g., central -59 -to feeding flock 820) and across the available ranges of remote sensor returns provided by radar system 160 and/or a selection of ranges encompassing feeding flock 820. As used herein, an azimuth-segmented velocity spectrum may correspond to a vertical slice of velocity profile 914 (e.g., display view 902) with a width at least as wide as the approximate width of radar beam 810, as represented in display view 902, and/or including increments of width corresponding to die angular resolution of radar system 160. In Fig. 9C, display view 904 shows feeding flock 820 generates detectable velocities that vary between +/-10m/s, whereas a single target would have a single velocity.
By contrast, display view 906 of Fig. 9D shows a range-segmented velocity spectrum 918 corresponding to a portion of velocity profile 914 sampled along a central range (e.g., central to feeding flock 820) and across the available azimuths of remote sensor returns provided by radar system 160 and/or a selection of azimuths encompassing feeding flock 820. As used herein, a range-segmented velocity spectrum may correspond to a horizontal slice of velocity profile 914 (e.g., display view 902) through a center of feeding flock 820 and with a 1 5 width approximately the width of feeding flock 820, as represented in display view 902, and/or a rational fraction of such widths (e.g., 1, 2/1, 3/1, 3/2, etc.). In Fig. 9D, display view 906 shows how velocity spectral content varies with angle, which is effectively the same as time, because radar beam 810 sweeps through and scans feeding flock 820 as radar assembly 310 rotates. From display view 906, it can be seen that range-segmented velocity spectrum 918 starts with a predominately negative bias (e.g., birds moving away from radar system 160) and ends with a predominately positive bias (e.g., birds moving towards radar system 160), and the majority of the data has a spread in velocities between +/-10m/s.
For example, Figs. 10A-D illustrate various display views generated by remote sensing imagery system 100 receiving radar returns associated with wildlife feeding flock 2 5 820, where the azimuthal cross section of feeding flock 820 (e.g., the maximum azimuthal width of feeding flock 820, in the frame of radar system 160) is wider than a corresponding remote sensor beam width of radar beam 820, in accordance with an embodiment of the disclosure. More generally, Figs. 10A-D illustrate the short-range case where feeding flock 820 is larger than the emission extents of radar beam 820.
In particular, display view 1000 of Fig. 10A shows the magnitude of the remote sensor returns (e.g., including remote sensor returns 1012 associated with feeding flock 820) plotted -60 -against range and angle/azimuth, with the gain of radar system 160 set so that the background noise is detected and rendered within display view 1000. For reference, box 1010 indicates the actual size/azimuthal width of feeding flock 820. Display view 1002 of Fig. 10B shows velocity profile 1014 (e.g., Doppler-derived velocity profile) corresponding to remote sensor returns 1012 associated with feeding flock 820, along with velocities of background noise In display view 1002, the instantaneous velocities of velocity profile 1014 show a distinct change from negative (left) to positive (right) values -illustrated by shading and/or color within display view 1002.
Display view 1004 of Fig. 10C shows an azimuth-segmented velocity spectrum 1016 1 0 corresponding to a portion of velocity profile 1014 sampled along a central angle (e.g., central to feeding flock 820) and across the available ranges of remote sensor returns provided by radar system 160 and/or a selection of ranges encompassing feeding flock 820. In Fig. IOC, display view 1004 shows a narrower spread in velocities (than in Fig. 9C) because azimuth-segmented velocity spectrum 1016 is taken at the angular center of feeding flock 820, where the radial velocities are transitioning from negative to positive bias.
Display view 1006 of Fig. 10D shows a range-segmented velocity spectrum 1018 corresponding to a portion of velocity profile 1014 sampled along a central range (e.g., central to feeding flock 820) and across the available azimuths of remote sensor returns provided by radar system 160 and/or a selection of azimuths encompassing feeding flock 820. In Fig. 10D, display view 1006 shows the same trend as velocity profile 1014 of Fig. 10B (a distinct change from negative (left) to positive (right) values), with a bias in the spectra going from negative to positive, but unlike the far range case of Fig. 9D, the central section, with the full spectral content, constitutes only a minority of the width of feeding flock 820. This is as expected, because radar beam 810 is sectioning feeding flock 820, so that initially it sees the birds moving away from radar system 160, then sees the center of feeding flock 820 where birds are moving towards and away from radar system 160, and eventually sees the birds moving towards radar system 160.
Figs. 11A-D illustrate various display views generated by remote sensing imagery system 100 receiving radar returns associated with a wildlife feeding flock consisting of a single target or flock element, in accordance with an embodiment of the disclosure. In particular, Figs. 11A-D show display views analogous to Figs. 9A-D and 10A-D (e.g., with -61 -remote sensor returns 1112, velocity profile 1114, azimuth-segmented velocity spectrum 1116, and range-segmented velocity spectrum 1118), but where feeding flock 820 has only a single target/bird with a velocity of 10m/s moving towards radar system 160. The single target does not show a spread in velocity spectrum, the radial velocities are contained within the width of the detection peak whose width is a function of size of the data set used in the processing and the processing windowing function. Also, the velocity spectrums do not show a transition from positive to negative radial velocities, the radial velocities remain constant with changing angle.
Figs. 12A-B illustrate various display views generated by remote sensing imagery 1 0 system 100 and including identified wildlife feeding flocks, in accordance with an embodiment of the disclosure. For example, in Fig. 12A, display view 1200 (e.g., similar in content to display view 404 Fig. 4E) includes feeding flock identifier 1210 configured to identify a position, size, and/or density of a detected feeding flock, relative to mobile structure 101, for example. In some embodiments, feeding flock identifier 1210 may be accompanied 1 5 by popup overlay annotation window 1212, which may include text and/or graphics indicating a probability or reliability percentage associated with feeding flock identifier 1210, an absolute position of feeding flock identifier 1210, a range to feeding flock identifier 1210, a bearing to feeding flock identifier 1210, an estimated size of feeding flock identifier 1210, a COG and/or SOG of feeding flock identifier 1210, and/or other feeding flock characteristics, as described herein.
In Fig. 12B, display view 1200 (e.g., similar in content to display view 606 Fig. 6E) includes feeding flock identifier 1210 configured to identify a position, size, and/or density of a detected feeding flock, relative to mobile structure 101, for example. In some embodiments, feeding flock identifier 1210 may be accompanied by and/or replaced by popup overlay window 1216 including portions of panorama image data 610 (of Figs. 6A-D) associated with and/or depicting optical representations of corresponding radar targets (e.g., feeding flock 820).
A feeding flock detection process, as described herein, exploits the difference between single targets and multiple targets (e.g., as shown in the velocity spectrums in Figs. 9A-11D) by detecting the combined contrary movements of birds within a flock. For example, embodiments may examine the radial velocity spectra, for a particular range and azimuth -62 -angle sample, and decide if the spectral content is broad and/or differentiated enough to indicate that the target is likely to be a wildlife feeding flock. The decision can be based on statistical techniques such as mean, standard deviation, and skewness of the distribution, and/or of the cumulative distribution, for example. Such analysis may be repeated for all available ranges and azimuth samples. Embodiments may also detelinine how the radial velocity spectra progresses with angle, looking for a characteristic change of bias in the radial velocities.
Embodiments may also compare the spectral progression against a set of predefined stored expected shapes and/or trends of a feeding flock progression. Alternatively, or in 1 0 addition, embodiments may be implemented using various Artificial Intelligence (Al) and/or machine learning techniques, such as training and/or using trained Convolution Neural Networks (CNNs) to identify radial velocity spectrums indicative of feeding flocks and/or determining a likelihood of such classification for a detected target. In embodiments where there is relative motion between radar system 160 and feeding flock 820, the relative radial 1 5 velocity component would manifest as an offset. in the average of the radial velocity spectrum, equal to the relative radial motion. Embodiments may be configured to remove such average before further processing and/or analyzing the radial velocity spectral content.
In various embodiments, system 100 may be configured to provide an indication of the probability that a tm-get is a wildlife feeding flock. This can be indicated on a PPI with the position highlighted and/or annotated. Such annotation may include the probability of the target being a feeding flock of birds, the UPS location, the range to the flock, the bearing to the target, the size of the target, and/or other flock characteristics, as described herein. More generally, such techniques may be used to identify other feeding flock behaviors associated with other wildlife, including fish and/or insects, for example, and distinguish between such wildlife and/or behaviors. In still further embodiments, system 100 may be configured to identify and track non-feeding flocks (e.g., migratory flocks) within a range of a ranging sensor system of system 100, for example, then detect conversion of the non-feeding flock to a feeding flock and issue a visual or audible alert, as described herein.
In the context of the use of radar to detect feeding flocks, generally the majority of the radar scan samples do not contain targets and are just background noise. To improve system efficiency, system 100 may be configured to identify background noise and limit feeding -63 -flock detection analysis to only samples that are not background noise and that meet or surpass a minimum candidate threshold selected to limit candidate targets. Another method of reducing the processing load and therefore improving the efficiency is to consider the amount of overlap between adjacent azimuth samples. Typically, the radial velocity spectra are generated by taking a number of adjacent azimuth samples at. a particular range, and as such, there will almost always be an overlap between subsequent samples. By stepping more than a single sample between samples, the processing load can be reduced significantly, and without significantly reducing system sensitivity or reliability.
In other embodiments, system 100 may be configured to accumulate multiple time 1 0 differentiated remote sensor returns of a target and perform feeding flock detection on the accumulated time differentiated remote sensor returns. For example, it is often the case for the short range feeding flock, where the feeding flock width is greater than the width of radar beam 810, that only some parts of the feeding flock appear on a PPI, due to the small radar cross section of the birds and the fact that sections of the flock can move to the surface of the 1 5 water where they will not be detected. The portions of the feeding flock that are visible will change over time, and so by accumulating and comparing scans and looking for these natural feeding flock phenomenon, additional confidence can be achieved on the categorization of the target. Embodiments of system 100 (e.g., implemented with embodiments of OPS 190, as shown in Figs. 3A-C) may be configured to provide relatively accurately aligned accumulated 2 0 time differentiated remote sensor returns, which increases the overall reliability and flexibility of system 100 and the feeding flock detection techniques described herein.
In various embodiments, system 100 may be configured to process radar returns to detect flocks of birds based, at least in part, on the Doppler velocity spectral content of radar targets corresponding to the flocks of birds. Such processing may be based on the progression 2 5 of the Doppler velocity spectral content, as described herein, and/or on comparing the progression against a set of stored expected shapes of the progression. In various embodiments, such comparison may be performed using AT and/or CNN based techniques.
In some embodiments, a candidate target may be scanned or sampled (in entirety) multiple times, and variations in the scans (e.g., related to natural evolution of the flock, such as diving through and/or alighting on water surfaces to claim fish) may be used to increase the reliability of the feeding flock detection. In other embodiments, such multiple scans may be -64 -accumulated and analyzed in aggregate (e.g., where scans are spatially aligned and overlaid on top of each other). System 100 may be implemented with a GNSS compass integrated with its radar assembly to provide improved stabilization between scans and better spatially align multiple scans to each other. In various embodiments, a position and/or other characteristics of a detected feeding flock may be indicated on a PPI and/or other display view of radar and/or other image data. Such position may optionally be annotated with various feeding flock characteristics, as described herein.
Fig. 13 illustrates a flow diagram 1300 of various operations to perform wildlife feeding flock detection in accordance with an embodiment of the disclosure. In some embodiments, the operations of Fig. 13 may be implemented as software instructions executed by one or more logic devices associated with corresponding electronic devices, sensors, structures, processes, and/or display views depicted in Figs. IA through 12B. More generally, the operations of Fig. 13 may be implemented with any combination of software instructions and/or electronic hardware (e.g., inductors, capacitors, amplifiers, actuators, or other analog and/or digital components).
It should be appreciated that any step, sub-step, sub-process, or block of process 1300 may be performed in an order or arrangement different from the embodiments illustrated by Fig. 13. For example, in other embodiments, one or more blocks may be omitted from or added to the process. Furthermore, block inputs, block outputs, various sensor signals, sensor 2 0 information, calibration parameters, and/or other operational parameters may be stored to one or more memories prior to moving to a following portion of a corresponding process. Although process 1300 is described with reference to systems, process, and/or display views described in Figs. 1A-12B, process 1300 may be performed by other systems different from those systems and including a different selection of electronic devices, sensors, assemblies, mobile structures, mobile structure attributes, processes, and/or display view characteristics.
Process 1300 represents a method for wildlife flock detection using any of the systems described herein and/or selections of elements of such systems. At the initiation of process 1300, various system parameters may be populated by prior execution of a process similar to process 1300, for example, or may be initialized to zero and/or one or more values corresponding to typical, stored, and/or learned values derived from past operation of process 1300, as described herein.
-65 -In block 1302, a logic device transmits remote sensor beams. For example, controller 130 of system 100, controller 220 of system 200, and/or controller 320 of system 300 or 302 may be configured to transmit sonar (acoustic) beams, radar beams, and/or other remote sensor beams from surface 212 using transceiver 234 and sensing element 264. In some embodiments, controllers 130, 220, and/or 320 may be configured to receive sensor transmission orientation and/or position data (e g, from one or more OPSs 190) and/or image data (e.g., from imaging system 282) corresponding to the transmitted beams, for example, for further processing. In other embodiments, controllers 130, 220, and/or 320 may be configured to receive a desired orientation, position, and/or angular frequency (e.g., an absolute angular frequency) for motion of sensing element 264, as user input from user interface 120 for example, and be configured to control a corresponding actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing element 264 prior to transmitting the remote sensor beams. In such embodiments, controllers 130, 220, and/or 320 may be configured to receive adjusted sensor transmission orientation and/or position data from OPS 190 piior to proceeding to block 1304.
In block 1304, a logic device receives remote sensor returns corresponding to a detected target. For example, controllers 130, 220, and/or 320 may be configured to receive remote sensor returns from sensing element 264 and/or transceiver 234 (e.2., remote sensing assembly 210) and, in some embodiments, substantially at the same time, receive orientation and/or position data from OPS 190, for example, and/or image data from imaging system 282.
In some embodiments, controllers 130, 220, and/or 320 may be configured to receive a desired orientation, position, and/or angular frequency from user interface 120 and be configured to control a corresponding actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing clement 264 prior to or while receiving the remote sensor returns, 2 5 then receiving, with the remote sensor returns, adjusted sensor return orientation and/or position data from OPS 190.
In embodiments where remote sensor assembly 210 comprises a radar assembly (e.g., radar assembly 310), actuator 316 may be configured to rotate radar antenna 364, OPS 190, and/or imaging system 282 about axis 313 of radar assembly 310 while the remote sensor returns are received by controllers 130, 220, and/or 320. In one such embodiment, controllers 130, 220, and/or 320 may be configured to control actuator 316 to rotate radar antenna 364 and/or OPS 190 according to the desired angular frequency relative to an absolute coordinate -66 -frame using absolute sensor return orientation and/or position data provided, at least in part, by UPS 190 (e.g., such as when UPS 190 includes a magnetometer capable of measuring Magnetic North and/or a GNSS compass). In various embodiments. UPS 190 may include one or more of accelerometer/gyroscope 144, GNSS 146, and/or orientation sensor 140 (e.g., a magnetometer, a float level, a compass, and/or other orientation sensing device adapted to measure the orientation and/or position of sensing element 264 during motion of sensing element 264, remote sensor assembly 210, and/or mobile structure 101).
In various embodiments, controllers 130, 220, and/or 320 may be configured to calibrate and/or align the various sensors of UPS 190 by receiving the remote sensor returns 1 0 and corresponding sensor return orientation and/or position data from UPS 190 and/or image data from imaging system 282 during motion of remote sensing assembly 210, sensing clement 264, and/or mobile structure 101, and calibrating and/or aligning one or more coordinate frames of UPS 190 with respect to each other, with respect to an absolute coordinate frame, and/or with respect to a coordinate frame of mobile structure 101, using 1 5 remote sensor returns, image data, and/or the sensor return orientation and/or position data, as described herein. For example, sensors with relatively good long-term stability may be used to remove sensor drift in data from sensors with relatively poor long-term stability, and sensors with relatively good short-term stability maybe used to remove short term errors or transients in data from sensors with relatively poor short-term stability. Such calibration processes can occur substantially in parallel with other steps in process 1300.
In block 1306, a logic device determines a radial velocity spectrum associated with a detected target. For example, controllers 130. 220. and/or 320 may be configured to determine a radial velocity spectrum associated with a target detected in block 1304 (e.g., a target generating remote sensor returns received in block 1304) based, at least in part, on the radar returns received in block 1304, for example, and/or other sensor data, including orientation and/or position data corresponding to the radar returns, radar assembly 310, and/or mobile structure 101 (e.g., provided by one or more OPSs 190).
In some embodiments, controllers 130, 220, and/or 320 may be configured to determine a radial velocity spectrum associated with a detected target by determining a centroid range and a centroid azimuth relative to the radar assembly corresponding to a centroid of the detected target, and determining an azimuth-segmented velocity spectrum -67 -corresponding to the centroid azimuth and a range-segmented velocity spectrum corresponding to the centroid range. In other embodiments, the radial velocity spectrum may be determined by determining a selection of target azimuths corresponding to a respective selection of remote sensor beams encompassing at least an azimuth extent of the detected target, determining a selection of target ranges encompassing at least a range extent of the detected target, and determining an azimuth-segmented velocity spectrum corresponding to the selection of target azimuths and a range-segmented velocity spectrum corresponding to the selection of target ranges.
In further embodiments, the radial velocity spectrum may be determined by determining an azimuth-segmented velocity spectrum average and/or a range-segmented velocity spectrum average corresponding to the detected target based, at least in part, on the received radar returns, and subtracting the azimuth-segmented velocity spectrum average from a corresponding azimuth-segmented velocity spectrum and/or a range-segmented velocity spectrum average from a corresponding a range-segmented velocity spectrum to compensate for relative motion between the radar assembly and the detected target.
The radial velocity spectrum may be determined more efficiently by identifying background noise in the received radar returns and determining the radial velocity spectrum based on a subset of the received radar returns that are not identified as background noise and/or that meet or surpass a minimum feeding flock candidate threshold selected to limit 2 0 candidate targets. The radial velocity spectrum may also be determined more efficiently by identifying at least one azimuthally overlapping sample of the received radar returns corresponding to the detected target and determining the radial velocity spectrum based on a subset of the received radar returns that exclude the at least one azimuthally overlapping sample.
2 5 In embodiments where the receiving the radar returns comprises receiving multiple time-differentiated radar returns corresponding to time-differentiated scans of an entirety of the detected target, the radial velocity spectrum may be determined by determining multiple time-differentiated radial velocity spectrums associated with the detected target or by determining an aggregate time-averaged radial velocity spectrum associated with the detected target, as described herein. In various embodiments, the received multiple time-differentiated radar returns may be spatially aligned to an absolute coordinate frame (for a static flock) or to -68 -a centroin of the detected target determined for each time differentiated scan of the entirety of the detected target (for a moving flock).
In some embodiments, controllers 130, 220, and/or 320 may be configured to determine a radial velocity spectrum associated with a detected target by determining a Doppler velocity (e.g., velocity spectrum or dement of a velocity spectrum) of a detected target based on the radar returns; determining a radial velocity of radar assembly 310 and/or a radar antenna of radar assembly 310, corresponding to the determined Doppler velocity of the detected target, based on the orientation and/or position data corresponding to radar assembly 310 and/or mobile structure 101; and determining a difference between the Doppler velocity of the detected target and the radial velocity of radar assembly 310 and/or a radar antenna of radar assembly 310.
In some embodiments, the determining the radial velocity of radar assembly 310 may include determining an absolute velocity of radar assembly 310 based, at least in part, on the orientation and/or position data corresponding to the radar returns received in block 1304 and/or radar assembly 310, determining an absolute orientation of antenna 364 of radar assembly 310 based, at least in part, on the orientation and/or position data corresponding to the radar returns received in block 1304 and/or radar assembly 310, and determining a component of the absolute velocity of radar assembly 310 in the direction of the absolute orientation of antenna 364 of radar assembly 310 based, at least in part, on the absolute 2 0 velocity of radar assembly 310 and the absolute orientation of antenna 364 of radar assembly 310.
In block 1307, a logic device determines a probability that a detected target includes a wildlife feeding flock. For example, controllers 130, 220, and/or 320 may be configured to determine a probability the detected target comprises feeding flock 820 based, at least in part, on the radial velocity spectrum determined in block 1306.
In some embodiments, the probability the detected target comprises feeding flock 820 may be determined by determining a breadth, differentiation, mean, standard deviation, and/or skewness of an azimuth-segmented velocity spectrum and/or a range-segmented velocity spectrum of the radial velocity spectrum, and determining the probability based, at least in part, on the determined breadth, differentiation, mean, standard deviation, and/or skewness of the azimuth-segmented velocity spectrum and/or the range-segmented velocity spectrum of -69 -the radial velocity spectrum. The probability may also be deteimined by determining an azimuthal progression of the radial velocity spectrum, and determining the probability based, at least in part, on the determined azimuthal progression of the radial velocity spectrum and/or a characteristic bias change associated with feeding flocks In other embodiments, the probability may be determined by determining a range and/or azimuthal progression of the radial velocity spectrum, and determining the probability based, at least in part, on the determined range and/or azimuthal progression of the radial velocity spectrum and/or a set of predefined exemplary spectral progression shapes and/or trends associated with feeding flocks. For example, the probability may be determined by determining a classification of the radial velocity spectrum based on a trained convolution neural network applied to a range and/or azimuthal progression of the radial velocity spectrum, and determining the probability based, at least in part, on the determined classification of the radial velocity spectrum. In embodiments where multiple time differentiated scans of a detected target are performed, the probability may be based on a comparison of multiple time-differentiated radial velocity spectrums associated with the detected target and natural feeding flock phenomenon or is based on an aggregate time-averaged radial velocity spectrum associated with the detected target, as described herein.
In block 1308, a logic device generates remote sensor image data based on remote sensor returns, radial velocity spectrums, radar return image data, and/or a probability a detected target includes a feeding flock. For example, controllers 130, 220, and/or 320 may be configured to generate remote sensor image data based at least in part, on the remote sensor returns, radial velocity spectrums, radar return image data, and/or the probability received and/or determined in blocks 1304-1307. In particular embodiments, the generating the radar image data includes generating a feeding flock identifier configured to identify a position, size, and/or density of a detected feeding flock, relative to mobile structure 101, generating a popup overlay annotation window including text and/or graphics indicating a probability or reliability percentage associated with feeding flock identifier 1210, an absolute position of feeding flock identifier 1210, a range to feeding flock identifier 1210, a bearing to feeding flock identifier 1210, an estimated size of feeding flock identifier 1210, a COG and/or SOG of feeding flock identifier 1210, and/or other feeding flock characteristics, and/or generating a popup overlay window including portions of panorama image data associated with and/or depicting optical representations of a corresponding radar target.
-70 -Jr embodiments where controllers 130, 220, and/or 320 are configured to control an actuator (e.g., actuator 316) to adjust the orientation and/or position of sensing element 264 (e.g., in blocks 1302 and/or 1304) prior to or during transmission of remote sensor beams and/or receipt of remote sensor returns, controllers 130, 220, and/or 320 may also be configured to generate the remote sensor image data based, at least in part, on the remote sensor returns and adjusted orientation and/or position data received in block 1304, and/or on adjusted or unadjusted sensor transmission orientation and/or position data received in block 1302.
As in block 1304, in various embodiments, controllers 130, 220, and/or 320 may be configured to calibrate and/or align the various sensors of OPS 190 by receiving the remote sensor returns and corresponding sensor return orientation and/or position data from OPS 190 during motion of remote sensing assembly 210, sensing element 264, and/or mobile structure 101. However, such calibration process can now take advantage of the additional remote sensor image data generated in this block 510. Therefore, in some embodiments, controllers 1 5 130, 220, and/or 320 may be configured to calibrate and/or align one or more coordinate frames of OPS 190 with respect to each other, with respect to an absolute coordinate frame, and/or with respect to a coordinate frame of mobile structure 101, using remote sensor returns and/or orientation and/or position data, as described herein. As noted in block 1304, such calibration processes can occur substantially in parallel with various other steps in process 1300 if the various data arc available.
In block 1310, a logic device renders remote sensor image data. For example, controllers 130. 220, and/or 320 may be configured to render the remote sensor image data generated in block 1308 using a display of user interface 120. In some embodiments, the rendered remote sensor image data may be referenced to an absolute coordinate frame (e.g., North-up) and/or a coordinate frame of the mobile structure (e.g., heading or course-up). In various embodiments, controllers 130, 220, and/or 320 may be configured to receive sensing element angle measurements from a sensing element angle sensor (e.g., sensing element angle sensor 317), so as to measure and/or compensate for an offset angle of the remote sensor assembly, for example. In such embodiments, controllers 130, 220, and/or 320 may be configured to determine the absolute coordinate frame display reference and/or the coordinate frame of the mobile structure display reference (e.g., both of which can require determination of the offset angle) based, at least in part, on the sensing element angle measurements and/or -71 -GNSS data provided by OPS 190. For example, in some embodiments, a time series of GNSS data may be used to measure SOG, COG, and/or track for mobile structure 101.
In further embodiments, image data, position data, orientation data, and/or remote sensor data acquired and/or processed in process 1300 may be used to control operation of mobile structure 101, such as by controlling steering sensor/actuator 150 and/or propulsion system 170 to steer mobile structure 101 according to a desired heading, track, one or more waypoints, a tide or wind effect, a feeding flock location and/or other types of user and/or environmental input.
It is contemplated that any one or combination of methods to provide remote sensing 1 0 imagery may be performed according to one or more operating contexts of a control loop, for example. such as a startup, learning, running. and/or other type operating context. For example, process 1300 may proceed back to block 1302 and proceed through process 1300 again to produce updated feeding flock detections and/or probabilities and/or associated remote sensor system imagery, as in a control loop.
1 5 Embodiments of the present disclosure can thus provide accurate and reliable wildlife beetling flock detection. Such embodiments may be used to provide sonar, radar, and/or oilier remote sensing imagery to assist in navigation for a mobile structure, survey of a body of water, approach to a school of fish, and/or to assist in the operation of other systems, devices, and/or sensors coupled to the mobile structure.
2 0 Where applicable, various embodiments provided by the present disclosure can be implemented using hardware, software, or combinations of hardware and software. Also where applicable, the various hardware components and/or software components set forth herein can be combined into composite components comprising software, hardware, and/or both without departing from the spirit of the present disclosure. Where applicable, the various 2 5 hardware components and/or software components set forth herein can be separated into sub-components comprising software, hardware, or both without departing from the spirit of the present disclosure. In addition, where applicable, it is contemplated that software components can be implemented as hardware components, and vice-versa.
Software in accordance with the present disclosure, such as non-transitory instructions, program code, and/or data, can be stored on one or more non-transitory machine readable mediums. It is also contemplated that software identified herein can be implemented -72 -using one or more general purpose or specific purpose computers and/or computer systems, networked and/or otherwise. Where applicable, the ordering of various steps described herein can be changed, combined into composite steps, and/or separated into sub-steps to provide features described herein.
-73 -

Claims (20)

  1. CLAIMS1. A method comprising: receiving radar returns corresponding to a detected target from a radar assembly configured to be mounted to a mobile structure; determining a radial velocity spectrum associated with the detected target based, at least in part, on the received radar returns; determining a probability the detected target comprises a feeding flock based, at least in part, on the determined radial velocity spectrum; and generating radar image data based, at least in part, on the received radar returns, the determined radial velocity spectrum, and/or the determined probability the detected target comprises the feeding flock.
  2. 2. The method of claim 1, wherein the determining the radial velocity spectrum comprises: determining a centroid range and a centroid azimuth relative to the radar assembly corresponding to a centroid of the detected target; and determining an azimuth-segmented velocity spectrum corresponding to the centroid azimuth and a range-segmented velocity spectrum corresponding to the centroid range.
  3. 3. The method of claim I. herein the determining the radial velocity spectrum comprises: determining a selection of target azimuths corresponding to a respective selection of remote sensor beams encompassing at least an azimuth extent of the detected target; determining a selection of target ranges encompassing at least a range extent of the 2 5 detected target; and determining an azimuth-segmented velocity spectrum corresponding to the selection of target azimuths and a range-segmented velocity spectrum corresponding to the selection of target ranges.
  4. -74 - 4. The method of claim I, wherein the determining the radial velocity spectrum comprises: determining an azimuth-segmented velocity spectrum average and/or a range-segmented velocity spectrum average corresponding to the detected target based, at least in part, on the received radar returns; and subtracting the azimuth-segmented velocity spectrum average from a corresponding azimuth-segmented velocity spectrum and/or a range-segmented velocity spectrum average from a corresponding a range-segmented velocity spectrum to compensate for relative motion between the radar assembly and the detected target.
  5. 5. The method of claim I, wherein the determining the radial velocity spectrum comprises: identifying background noise in the received radar returns; and determining the radial velocity spectrum based on a subset of the received radar returns that are not identified as background noise and/or that meet or surpass a minimum feeding flock candidate threshold selected to limit candidate targets.
  6. 6. The method of claim I, wherein the determining the radial velocity spectrum comprises: 2 0 identifying at least one azimuthally overlapping sample of the received radar returns corresponding to the detected target; and determining the radial velocity spectrum based on a subset of the received radar returns that exclude the at least one azimuthally overlapping sample.
  7. 7. The method of claim I, wherein: the receiving the radar returns corresponding to the detected target comprises receiving multiple time-differentiated radar returns corresponding to time-differentiated scans of an entirety of the detected target; and -75 -the determining the radial velocity spectrum comprises determining multiple time-differentiated radial velocity spectrums associated with the detected target; or the determining the radial velocity spectrum comprises determining an aggregate time-averaged radial velocity spectrum associated with the detected target.
  8. S. The method of claim 7, wherein: the received multiple time-differentiated radar returns are spatially aligned to an absolute coordinate frame or to a centroid of the detected target determined for each time differentiated scan of the entirety of the detected target.
  9. 9. The method of claim 1, wherein the determining the probability the detected target comprises the feeding flock comprises: determining a breadth, differentiation, mean, standard deviation, and/or skewness of an azimuth-segmented velocity spectrum and/or a range-segmented velocity spectrum of the 1 5 radial velocity spectrum; and determining the probability based, at least in part, on the determined breadth, differentiation, mean, standard deviation, and/or skewness of the azimuth-segmented velocity spectrum and/or the range-segmented velocity spectrum of the radial velocity spectrum.
  10. 2 0 1 0. The method of claim 1, wherein the determining the probability the detected target comprises the feeding flock comprises: determining an azimuthal progression of the radial velocity spectrum; and determining the probability based, at least in part, on the determined azimuthal progression of the radial velocity spectrum and/or a characteristic bias change associated with feeding flocks.
  11. 11. The method of claim I, wherein the determining the probability the detected target comprises the feeding flock comprises: -76 -determining a range and/or azimuthal progression of the radial velocity spectrum; and determining the probability based, at least in part, on the determined range and/or azimuthal progression of the radial velocity spectrum and/or a set of predefined exemplary spectral progression shapes and/or trends associated with feeding flocks.
  12. 12. The method of claim 1, wherein the determining the probability the detected target comprises the feeding flock comprises: determining a classification of the radial velocity spectrum based on a trained convolution neural network applied to a range and/or azimuthal progression of the radial velocity spectrum; and determining the probability based, at least in part, on the determined classification of the radial velocity spectrum.
  13. 1 3. The method of claim 1, wherein: the determining the probability the detected target is based on a comparison of multiple time-differentiated radial velocity spectrums associated with the detected target and natural feeding flock phenomenon or is based on an aggregate time-averaged radial velocity spectrum associated with the detected target.
  14. 14. The method of claim 1 herein: the radar assembly comprises an imaging system coupled to or within the radar assembly and configured to provide image data associated with the radar assembly; and the method comprises: receiving image data corresponding to the radar returns from the imaging system; and generating the radar image data based at least in part, on the image data corresponding to the radar returns.-77 -
  15. 1 5. The method of claim 14, wherein: the generating the radar image data comprises generating panorama image data based, at least in part, on the image data corresponding to the radar returns, and generating the radar image data comprising a field of view (FoV) indicator overlay corresponding an Fo V associated with the generated panorama image data; and the method comprises generating a display view comprising the radar image data and the generated panorama image data disposed above and/or at least partially spatially mapped to corresponding radar image adjoining the panorama image data
  16. 1 6. The method of claim 1, wherein the radar assembly comprises an orientation and position sensor (OPS) coupled to or within the radar assembly and configured to provide orientation and position data associated with the radar assembly, and wherein the method comprises: receiving orientation and/or position data corresponding to the radar returns from the 15 OPS; and determining the radial velocity spectrum associated with the detected target based, at least in part, on the radar returns and the orientation and/or position data corresponding to the radar assembly.
  17. 1 7. The method of claim 16, wherein the determining the radial velocity spectrum comprises: determining a Doppler velocity of the target based, at least in pail, on the radar returns; determining a radial velocity of the radar assembly, corresponding to the determined Doppler velocity of the target, based on the orientation and/or position data corresponding to the radar assembly; and determining a difference between the Doppler velocity of the target and the radial velocity of the radar assembly.-78 -
  18. 1 8. The method of claim 16, wherein the OPS comprises: a gyroscope and/or accelerometer coupled to an antenna platform of the radar assembly and disposed at or adjacent to a rotational axis of the radar assembly; a first global navigation satellite system receiver coupled to the antenna platform and disposed at or adjacent to the rotational axis of the radar assembly; and a second global navigation satellite system receiver coupled to the antenna platform of the radar assembly and disposed a baseline length from the first global navigation satellite system receiver.
  19. 1 9. The method of claim 1, further comprising a display configured to communicate with the logic device, wherein the method comprises: rendering the radar image data using the display, wherein the rendered radar image data is referenced to an absolute coordinate frame and/or a coordinate frame of the mobile structure.
  20. 20. A system comprising: a radar assembly configured to be mounted to a mobile structure; and a logic device configured to communicate with the radar assembly, wherein the logic device is configured to perform the steps of any one of claims 1 to 19 -79 -
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