NZ726087B2 - Photonic fence - Google Patents
Photonic fence Download PDFInfo
- Publication number
- NZ726087B2 NZ726087B2 NZ726087A NZ72608715A NZ726087B2 NZ 726087 B2 NZ726087 B2 NZ 726087B2 NZ 726087 A NZ726087 A NZ 726087A NZ 72608715 A NZ72608715 A NZ 72608715A NZ 726087 B2 NZ726087 B2 NZ 726087B2
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- New Zealand
- Prior art keywords
- organism
- imager
- image
- mosquitoes
- detector
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Classifications
-
- A—HUMAN NECESSITIES
- A01—AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
- A01M—CATCHING, TRAPPING OR SCARING OF ANIMALS; APPARATUS FOR THE DESTRUCTION OF NOXIOUS ANIMALS OR NOXIOUS PLANTS
- A01M1/00—Stationary means for catching or killing insects
- A01M1/02—Stationary means for catching or killing insects with devices or substances, e.g. food, pheronones attracting the insects
-
- A—HUMAN NECESSITIES
- A01—AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
- A01M—CATCHING, TRAPPING OR SCARING OF ANIMALS; APPARATUS FOR THE DESTRUCTION OF NOXIOUS ANIMALS OR NOXIOUS PLANTS
- A01M1/00—Stationary means for catching or killing insects
- A01M1/02—Stationary means for catching or killing insects with devices or substances, e.g. food, pheronones attracting the insects
- A01M1/026—Stationary means for catching or killing insects with devices or substances, e.g. food, pheronones attracting the insects combined with devices for monitoring insect presence, e.g. termites
-
- A—HUMAN NECESSITIES
- A01—AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
- A01M—CATCHING, TRAPPING OR SCARING OF ANIMALS; APPARATUS FOR THE DESTRUCTION OF NOXIOUS ANIMALS OR NOXIOUS PLANTS
- A01M1/00—Stationary means for catching or killing insects
- A01M1/10—Catching insects by using Traps
- A01M1/106—Catching insects by using Traps for flying insects
-
- A—HUMAN NECESSITIES
- A01—AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
- A01M—CATCHING, TRAPPING OR SCARING OF ANIMALS; APPARATUS FOR THE DESTRUCTION OF NOXIOUS ANIMALS OR NOXIOUS PLANTS
- A01M1/00—Stationary means for catching or killing insects
- A01M1/22—Killing insects by electric means
- A01M1/226—Killing insects by electric means by using waves, fields or rays, e.g. sound waves, microwaves, electric waves, magnetic fields, light rays
Abstract
system for and method of tracking airborne organisms is disclosed. The system comprises an imager having an image resolution and a field of view; a backlight source configured to be placed in the field of view of the imager; a processor configured to analyze one or more images captured by the imager including at least a portion of the backlight source, the processor being configured to identify a biological property of an organism in the field of view of the imager using at least one datum selected from the group consisting of characteristic frequency, harmonic amplitude, shape, size, airspeed, ground speed, and location; and a detector configured to detect an organism in the field of view of the imager, wherein at least one of the imager and the detector is configured to collect color data and to use the collected color data to determine a probable engorgement status of the organism. er including at least a portion of the backlight source, the processor being configured to identify a biological property of an organism in the field of view of the imager using at least one datum selected from the group consisting of characteristic frequency, harmonic amplitude, shape, size, airspeed, ground speed, and location; and a detector configured to detect an organism in the field of view of the imager, wherein at least one of the imager and the detector is configured to collect color data and to use the collected color data to determine a probable engorgement status of the organism.
Description
Photonic Fence
All subject matter of the Priority Applications and the Related Applications
and of any and all parent, grandparent, great-grandparent, etc. applications of the
Priority Applications and the Related Applications, including any priority claims, is
incorporated herein by reference to the extent such subject matter is not inconsistent
herewith.
SUMMARY
In one aspect, a system for tracking airborne organisms includes an imager
(e.g., a camera or scanner), a backlight source (e.g., a retroreflector), and a processor.
The processor is configured to analyze one or more images captured by the imager
including at least a portion of the backlight source and to identify a biological
property (e.g., genus, species, sex, mating status, gravidity, feeding status, age, or
health status) of an organism (e.g., an insect, such as a mosquito, a bee, a locust, or a
moth) in the field of view of the imager, using characteristic frequency, harmonic
amplitude, shape, size, airspeed, ground speed, or location. The system may further
include an illumination light source arranged to illuminate the field of view of the
imager. The organism may have wings, in which case the processor may be
configured to identify the biological property using a wingbeat frequency.
The system may further include a detector configured to detect a signal
indicative of a property of an organism in the field of view of the imager. For
example, the detector may include a photodiode, which may be configured to detect
light from an optional targeting light source configured to be directed at the organism,
or light from the backlight source. The targeting light source may be configured to be
directed at the organism from a plurality of directions (e.g., a group of spotlights or
LEDs which may be placed at positions surrounding an expected organism location).
The detector may be configured to detect a signal indicative of a distance from the
imager to the organism, for example by detecting shadows cast by the organism in a
plurality of targeting light sources (which may, for example, be different colors or be
configured to be selectively switched on and off), or by using a plurality of optical
position sensing devices to triangulate the organism. The processor (or a second
processor) may be configured to use this signal to determine a distance from the
imager to the organism. Alternatively, the processor may use one or more images
captured by the imager to determine the distance to the organism, for example in
cases where the imager includes a plurality of imaging devices, which may function
in the same ways as the targeting light sources described above. The detector may
have a bandwidth greater than one-half of a frame rate of the imager, or less than or
equal to a frame rate of the imager, and may have an image resolution or field of view
greater or smaller than that of the imager. The detector may also be acoustic.
In another aspect, a method of tracking airborne organisms includes acquiring
a first image from an imager, the imager having a backlight source (e.g., a
retroreflector) in its field of view, determining that the image includes an organism at
a location, acquiring a second image, and determining a biological property (e.g.,
genus, species, sex, mating status, gravidity, feeding status, age, or health status) of
the organism using the second image (e.g., by determining characteristic frequency,
harmonic amplitude, shape, size, airspeed, ground speed, flight direction, flight path,
or location). The first and second images have different resolutions (e.g., the first
image may be finer or coarser than the second image), or they are acquired at
different frame rates (e.g., the second image may be acquired at a faster or slower
frame rate than the first). The images may also differ in size. Acquiring the first or
second image may include illuminating the region of the acquired image, for example
with a laser or an LED. Acquiring either image may include acquiring a series of
images. The images may both be acquired by the imager, or the second image may
be acquired by a different device (e.g., a photodiode).
In another aspect, a system for disabling airborne organisms includes an
imager (e.g., a camera or scanner), a backlight source (e.g., a retroreflector), a
processor, and a disabling system. The processor is configured to analyze one or
more images captured by the imager including at least a portion of the backlight
source and to identify a biological property (e.g., genus, species, sex, mating status,
gravidity, feeding status, age, or health status) of an organism (e.g., an insect, such as
a mosquito, a bee, a locust, or a moth) in the field of view of the imager, using
characteristic frequency, harmonic amplitude, shape, size, airspeed, ground speed, or
location. The disabling system is configured to disable the organism (e.g., by killing,
damaging a wing or antenna, or impairing a biological function) responsive to the
identified property (e.g., only disabling organisms of a determined genus, species,
sex, or gravidity). The disabling system may include a laser (e.g., a UV-C laser or an
infrared laser), and may be configured to accept location data from the processor for
use in targeting the organism.
In another aspect, a method of disabling airborne organisms includes
acquiring a first image from an imager, the imager having a backlight source (e.g., a
retroreflector) in its field of view, determining that the image includes an organism at
a location, acquiring a second image, determining a biological property (e.g., genus,
species, sex, mating status, gravidity, feeding status, age, or health status) of the
organism using the second image (e.g., by determining characteristic frequency,
harmonic amplitude, shape, size, airspeed, ground speed, flight direction, flight path,
or location), and disabling the organism responsive to the determined biological
property (e.g., killing the organism or impairing a body function such as mating,
feeding, flying, hearing, acoustic sensing, chemosensing, or seeing). The first and
second images have different resolutions (e.g., the first image may be finer or coarser
than the second image), or they are acquired at different frame rates (e.g., the second
image may be acquired at a faster or slower frame rate than the first). The organism
may be disabled, for example, by directing a laser beam at the organism (optionally
using targeting information obtained from one or both of the acquired images), by
directing an acoustic pulse at the organism, by releasing a chemical agent, or by
directing a physical countermeasure at the organism.
In another aspect, a system for identifying status of flying insects in a region
includes an imager, a backlight source (e.g., a retroreflector) configured to be placed
in the field of view of the imager, and a processor configured to analyze one or more
images captured by the imager including at least a portion of the backlight source, the
processor being configured to identify probable biological status of an insect in the
field of view of the imager using characteristic frequency, shape, size, airspeed,
ground speed, or location. The insect may be a mosquito, in which case the processor
may be configured to determine a probability that the mosquito is infected with
malaria. The processor may be configured to gather probable biological status of a
plurality of insects, for example gathering population data for a population of insects,
or gathering probable biological status data as a function of an environmental
parameter (e.g., time of day, season, weather, or temperature).
In another aspect, a system for tracking airborne organisms includes an
imager, a backlight source (e.g., a retroreflector) configured to be placed in the field
of view of the imager, a processor, and a detector configured to detect an organism in
the field of view of the imager. At least one of the imager and the detector is
configured to collect color data. The processor is configured to analyze one or more
images captured by the imager including at least a portion of the backlight source,
and to identify a biological property of an organism in the field of view of the imager
using at least one datum selected from the group consisting of characteristic
frequency, harmonic amplitude, shape, size, airspeed, ground speed, and location.
The system may use the collected color data to determine a probable engorgement
status of the organism (e.g., a mosquito engorged with blood). The system may
further include a forward-facing light source configured to illuminate the organism,
for example when it is in the field of view of the imager or of the detector. The
detector may include a photodiode (e.g., a quad cell photodiode). The system may
further include a targeting light source configured to be directed at the organism from
one or more directions, in which case the photodiode may be configured to detect
light reflected from the organism or light from the backlight source. The detector
may be configured to detect a signal indicative of a distance from the imager to the
organism. The processor (or a second processor) may be configure to determine a
distance from the imager to the organism using the signal detected by the detector.
The processor may be configured to determine a distance from the imager to the
organism by using the signal detected by the detector. The system may include a
plurality of targeting light sources in differing positions (e.g., different colored light
sources), so that the detector may detect shadows cast by the organism in each light
source. These targeting light sources may be configured to be selectively switched on
and off. The detector may include a plurality of optical position sensing devices
configured to provide range information by triangulation of the organism. The
detector may have a bandwidth greater than one-half the frame rate of the imager, or
of less than or equal to the frame rate of the imager, and may have an image
resolution that is less than or greater than the image resolution of the imager. The
processor may be configured to identify genus, species, sex, age, mating status,
gravidity, feeding status, or health status of the organism. The system may further
include a disabling system responsive to the identified property configured to disable
the organism.
In another aspect, a method of tracking airborne organisms includes acquiring
a first image (e.g., a monochrome or a color image) having a first image resolution
from an imager with a backlight source (e.g., a retroreflector) in its field of view,
determining that the image includes an organism at a location, acquiring a second
image having a second image resolution and including color data (e.g., with a
photodiode such as a quad cell photodiode or with an imager), and determining a
biological property of the organism (e.g., genus, species, sex, mating status, gravidity,
feeding status, age, or health status) using at least the second image, where the first
and second images differ in resolution or frame rate, or the second image includes
color data not included in the first image. Determining the biological property (e.g.,
engorgement status) may include using the color data, and may include determining
characteristic frequency, harmonic amplitude, shape, size, airspeed, ground speed,
flight direction, flight path, or location.
In another aspect, a system for tracking airborne organisms includes an
imager, a backlight source (e.g., a retroreflector) configured to be placed in the field
of view of the imager, and a processor configured to analyze one or more images
captured by the imager, the processor being configured to identify a rotation of an
organism in the field of view of the imager. The processor may be configured to
determine a revolution rate of the organism, and may further be configured to
determine a wingbeat frequency of an organism that has wings. The system may
further include a detector (e.g., a photodiode such as a quad cell photodiode)
configured to detect a signal indicative of a property of an organisms in the field of
view of the imager. The system may further include a targeting light source (from
one or more directions), and the photodiode may be configured to detect light from
the light source reflected from the organism or light from the backlight source. The
detector may be configured to detect a signal indicative of a distance from the imager
to the organism, for example to be determined by the processor or by a second
processor. The system may include a plurality of targeting light sources at differing
positions, where the detector is configured to detect shadows cast by the organism in
each light source, or the detector may include a plurality of optical position sensing
devices configured to provide range information by triangulation of the organism.
The detector may have a bandwidth greater than about one-half of a frame rate of the
imager, or of less than or about equal to a frame rate of the imager, and may have an
image resolution less than or greater than the image resolution of the imager. The
processor may be configured to identify a biological property of the organism
selected from the group consisting of genus, species, sex, mating status, gravidity,
feeding status, age, and health status. The system may further include a disabling
system configured to disable the organism.
In another aspect, a method of tracking airborne organisms includes acquiring
a first image from an imager having a backlight source (e.g., a retroreflector) in its
field of view, determining at the image includes an organism at a location, and
determining that the organism is rotating about a revolution axis. The method may
further include determining a revolution rate or revolution axis for the organisms, or
determining a wingbeat frequency for an organism with wings. It may include
determining a biological property of the organism (e.g., genus, species, sex, mating
status, gravidity, feeding status, age, or health status), which may include determining
a datum selected from the group consisting of characteristic frequency, harmonic
amplitude, shape, size, airspeed, ground speed, flight direction, flight path, and
location, and may include responding to the determined biological property by
disabling the organism. The method may further include detecting a signal indicative
of a distance from the imager to the organism.
In another aspect, a system for tracking organisms includes an imager, a
backlight source (e.g., a retroreflector) configured to be placed in the field of view of
the imager, a processing configured to analyze one or more images captured by the
imager and to identify a biological property (e.g., genus, species, sex, mating status,
gravidity, feeding status, age, or health status) of an airborne organism (e.g., an insect
such as a mosquito or a psyllid) in the field of view of the imager, and a physical trap
configured to physically capture at least one organism (e.g., a flying organism, or an
immature individual of a species that is capable of flight at maturity), wherein the
system is configured to use the identified biological property to measure an efficacy
of the physical trap. Measuring the efficacy of the physical trap may include
comparing a number of organisms in the trap with a number of airborne organisms
identified by the processor (e.g., during the same time interval or during a different
time interval). The field of view of the imager may include at least a portion of the
trap interior, or it may include a volume exterior to the trap.
In another aspect, a method of determining efficacy of a trap for airborne
organisms includes monitoring a population of airborne organisms to determine a
population in a monitored space by acquiring an image from an imager having a field
of view including the monitored space and a backlight (e.g., a retroreflector),
determining that the image includes an organism (e.g., an insect such as a mosquito or
a psyllid), and determining a biological property of the organism (e.g., genus, species,
sex, mating status, gravidity, feeding status, age, or health status), determining a
number of airborne organisms captured by a trap, and comparing the number of
captured organisms with the determined population of airborne organisms.
Comparing the number of captured organisms with the determined population of
organisms may include comparing only organisms having a selected biological
property, or comparing a fraction of organisms having a selected biological property.
The trap may be configured to capture flying organisms, or immature individuals of a
species that is capable of flight at maturity.
In another aspect, a system for tracking airborne organisms includes a
physical trap configured to capture at least one airborne organism (e.g., an insect such
as a mosquito or a psyllid), a detection component configured to identify a biological
property (e.g., genus, species, sex, mating status, gravidity, feeding status, age, or
health status) of the captured organism, the detection component including an imager,
a backlight source (e.g., a retroreflector) configured to be placed in the field of view
of the imager, and a processor configured to analyze one or more detected images to
identify the biological property, and a notification component configured to send a
notification to a remote user in response to the identified property.
In another aspect, there is provided a system for tracking airborne organisms,
comprising:
an imager having an image resolution and a field of view;
a backlight source configured to be placed in the field of view of the imager;
a processor configured to analyze one or more images captured by the imager
including at least a portion of the backlight source, the processor being configured to
identify a biological property of an organism in the field of view of the imager using
at least one datum selected from the group consisting of characteristic frequency,
harmonic amplitude, shape, size, airspeed, ground speed, and location; and
a detector configured to detect an organism in the field of view of the imager,
wherein at least one of the imager and the detector is configured to collect
color data and to use the collected color data to determine a probable engorgement
status of the organism.
In another aspect, there is provided a method of tracking airborne organisms,
comprising:
acquiring a first image having a first image resolution from an imager, the
imager having a backlight source in its field of view;
determining that the image includes an organism at a location;
acquiring a second image having a second image resolution including color
data; and
determining probable engorgement status of the organism using the second
image, wherein:
the first image resolution differs from the second image resolution; or
the first image is acquired at a first frame rate, the second image is
acquired at a second frame rate, and the first and second frame rates differ
from one another; or
the second image includes color data not included in the first image.
The foregoing summary is illustrative only and is not intended to be in any
way limiting. In addition to the illustrative aspects, embodiments, and features
described above, further aspects, embodiments, and features will become apparent by
reference to the drawings and the following detailed description.
BRIEF DESCRIPTION OF THE FIGURES
is a schematic of a detection system.
illustrates an embodiment of a system surrounding a structure.
is a control flow diagram for an implementation of a tracking and
dosing system.
is a photograph of a damaged mosquito wing.
is a lethality graph for a series of mosquito IR laser exposures.
is a lethality graph for UV laser exposures for female mosquitoes.
is a lethality graph for UV laser exposures for male mosquitoes.
DETAILED DESCRIPTION
In the following detailed description, reference is made to the accompanying
drawings, which form a part hereof. In the drawings, similar symbols typically
identify similar components, unless context dictates otherwise. The illustrative
embodiments described in the detailed description, drawings, and claims are not
meant to be limiting. Other embodiments may be utilized, and other changes may be
made, without departing from the spirit or scope of the subject matter presented here.
As shown in a system for locating or identifying information about, or
optionally disabling insects or other organisms includes an imager 10, illumination
source 12, a retroreflective surface 14, a processor 16 configured to analyze images
captured by the imager 10, a targeting laser 18, and a photodiode 20. In the
illustrated embodiment, imager 10 is a CMOS camera placed at the base of support
post 22, but a variety of other imagers may be appropriate. For example, CCD-based
detectors, scanning systems, or other types of detectors may be implemented.
Moreover, in some approaches two or more imagers may be placed on support post
22 or on other supports. In some embodiments, retroreflective surface 14 may be
replaced with a light emitting surface (backlight), for example a substantially uniform
light emitting surface with a desired angular distribution at light, which may be aimed
toward imager 10.
As illustrated, retroreflective surface 14 is placed on adjacent support post 24
spaced apart from the support post 22 to define an intermediate region. In some
embodiments, imagers or retroreflective surfaces may be placed on multiple support
posts. For example, in some embodiments, support posts may be arranged to
surround an area of interest, as illustrated in and imagers or retroreflective
surfaces may be arranged on the support posts so as to view all, substantially all, or at
least a portion of the entrances to the area of interest. While elements placed on
support post 22 in have been placed apart for clarity in illustration, in practice
they may be more closely spaced.
In the illustrated embodiment, support posts 22 and 24 have a height selected
to exceed the typical flying height of an insect of interest. For example, more than
99% of Anopheles mosquitoes (which may carry strains of malaria that can infect
humans) fly at less than 3-5 meters of altitude, so support posts of 3-5 meters may be
used in a system that can view substantially all mosquitoes passing through an area of
interest. The width of support posts 22 and 24 is selected to provide adequate support
and surface area for components including retroreflective surface 14; in the illustrated
embodiment, the support posts are 10-20 cm wide, and are placed 100 m apart. The
width of retroreflective surface 14, and of the field of view of imager 10, may be
selected as a function of the flight speed of the target(s) of interest and the frame rate
of imager 10, such that the silhouette of an insect will be within the field of view for
at least one full frame interval, and as a function of the flight speed and the desired
wingbeat sensing accuracy, such that the silhouette will be within the field of view for
a sufficient period to make a measurement of the desired accuracy.
Illumination source 12 (which may be, for example, a laser, an LED, an
incandescent light, a mirror reflecting sunlight, or any other suitable light source)
directs light from support post 22 toward support post 24 to illuminate the
retroreflective surface 14 on support post 24. In the illustrated embodiment,
illumination source 12 is an LED producing a fan-shaped beam. Retroreflector 14
returns light to imager 10. When an organism 26 (such as a mosquito) travels
between posts 22 and 24, the organism appears as a dark shadow on the
retroreflective background 14 or as a break in a beam of light. Upon detecting such a
shadow, in some embodiments, imager 10 may shift to a higher frame rate or a higher
spatial resolution local to the shadow. Alternatively, a second imager (not shown)
may be employed to collect a higher frame rate or higher resolution image in a small
region local to the shadow. The higher frame rate image may be used, for example,
by processor 16 to identify a wingbeat frequency for the mosquito (or other flying
organism). In some embodiments, the sensing of organism 26 may trigger a forward-
facing light. In other embodiments, a forward-facing light may be always on, or
turned on when ambient light is low. Forward-facing illumination is expected to be
preferred if it is desired to identify color data for the organism. In some
embodiments, forward-facing light may be provided by targeting laser 18, or by a
more broad-band source (not shown). Wingbeat frequency and harmonics may be
used to determine probable species, sex, and other biological properties such as
mating status of a mosquito; for some information on characteristic frequencies, see
Robertson, et al., “Heritability of wing-beat frequency in Anopheles
quadrimaculatus,” J. Amer. Mosquito Control Assoc., 18(4):316-320 (2002); Moore,
“Artificial Neural Network Trained to Identify Mosquitoes in Flight,” J. Insect
Behavior, 4(3):391-396 (2005); “An Automated Flying-Insect Detection System,”
NASA Technical Briefs, SSC-00192 (2007), available at <www.techbriefs.com/
content/view/2187/34/>; Göpfert, et al., “Nanometre-range acoustic sensitivity in
male and female mosquitoes,”Proc. Biol. Sci. 267(1442):453-457 (2000); and Gibson,
et al., “Flying in Tune: Sexual Recognition in Mosquitoes,” Curr. Biol. 16:1311-1316
(2006), all of which are incorporated herein by reference.
In some embodiments, periodic data which is not directly related to wingbeats
may be collected. In particular, it has been observed that Asian Citrus Psyllids rotate
in space as they launch themselves into the air, and these rotations have a periodicity
that may be captured by a system such as that shown in See, e.g., our video
available at <www.youtube.com/watch?v=fMu8n1_8Ozg>. In some embodiments,
processor 16 may be configured to identify such rotation and separate it from
wingbeats using data from imager 10. In such embodiments, higher frame rate and/or
a second imager as described above may have utility in identifying rotary movements
of the organism. In some embodiments, such rotary movements may be used to
identify a species or other biological property of the organisms.
In some embodiments, harmonic frequency spectra may be of significant
utility in identifying mosquitoes or other insects. For example, the second harmonic
frequency of the wingbeats of certain honeybee species are substantially similar to the
wingbeat frequency of certain species of mosquitoes. Thus, in some embodiments,
spectral analysis of harmonic frequencies may be used to prevent spurious
identification of honeybees as mosquitoes. In addition, concentrating on higher-
frequency harmonics may allow faster detection and identification of insects in some
embodiments by reducing the time period necessary to identify the frequencies
present. Chen, et. al, have described a system using such spectra to identify
mosquitoes and other insects. See Chen, et al., “Flying Insect Classification with
Inexpensive Sensors,” published at <arxiv.org/pdf/1403.2654v1>, a copy of which is
included herewith and incorporated by reference herein.
In some embodiments, processor 16 may incorporate a graphics processing
unit (graphics card) for analysis. The graphics processing unit (GPU) may have a
parallel “many-core” architecture, each core capable of running many threads (e.g.,
thousands of threads) simultaneously. In such a system, full-frame object recognition
may be substantially speeded as compared to traditional processors (e.g., 30 times as
fast). In some embodiments, a field-programmable gate array may be directly
connected to a high-speed CMOS sensor for fast recognition.
In addition to the higher-speed camera imaging of the organism, the system
may also employ a targeting laser 18 (or other suitable nonlaser light source) and
detector (such as photodiode 20) to confirm characteristics of organism 26. For
example, if processor 16 identifies a morphology or frequency suggestive of an
organism of interest (such as a mosquito), targeting laser 18 may be directed at
organism 26 using location information from processor 16. The reflection of
targeting laser 18 from organism 26 is detected by photodiode 20. In some
embodiments, this reflection may have relatively lower image resolution but a very
fast frame rate, wide frequency response, or a high sensitivity to changes in cross
section of the organism. The signal from the photodiode may be used, for example,
to measure wingbeat frequency or harmonics very accurately to identify the organism
or to otherwise classify the organism into an appropriate category, or otherwise
distinguish the organism. Targeting laser 18 may also or alternatively provide
additional light for higher frame rate or higher resolution image acquisition by imager
The second imager or targeting laser 18 may be aimed by a galvanometer,
MEMS device, or other suitable optical pointing systems. In some embodiments, the
second imager or targeting laser 18 may be aimable in two dimensions, while in
others, a single-axis galvanometer system may be used to allow the targeting laser to
track within a single firing plane. In one-dimensional systems, a series of two-
dimensional images captured by imager 10 may be used to predict when organism 26
will cross the firing plane, at which point it may be illuminated by targeting laser 18.
In some embodiments, targeting laser 18 may be continuously scanned through space,
for example by a rotating or oscillating mirror, and fired when its projected path
intersects with the organism. In some such embodiments, the scan path may be
dynamically adjusted, for example to provide a dwell time at a target location.
While the targeting laser 18 is described as being aimed by a galvanometer,
MEMS device, or other targeting system, such aiming may be implemented via direct
physical positioning of the laser, or through direction by an optical system, including
conventional optical components, such as acoustical optic scanners, scanning mirrors,
or similar. In some embodiments, a phase detection autofocus system such as that
described in U.S. Patent No. 6,480,266, which is incorporated by reference herein,
may be used to focus the laser at the point of interest.
In some embodiments, once the organism has been identified or otherwise
categorized or characterized, it may be desirable to take action to disable or destroy
the organism. For example, in some embodiments, when a mosquito has been
detected as entering the field of view, a countermeasure such as a laser beam may be
used to disable or destroy the mosquito. In such embodiments, location information
for the organism 26 may be passed from the imager 10, the processor 16, the targeting
laser 18, or an associated targeting processor, not shown, to a dosing laser 28. In
some embodiments, other countermeasures might include a sonic countermeasure
transmitted by an acoustic transducer, a physical countermeasure such as a solid or
liquid projectile, or a chemical response, in lieu of or in addition to dosing laser 28.
In some embodiments, targeting laser 18 and dosing laser 28 may be the same
component, for example using a higher amplitude for dosing than for targeting. In
other embodiments, targeting laser 18 and dosing laser 28 may be separate
components. In this case, they may optionally use a common aiming and/or focusing
mechanism such as a beam splitter or beam combiner that allows dosing laser 28 to
fire along the same path as targeting laser 18. is a control flow diagram for an
implementation of the tracking and dosing system, illustrating cooperation of imager
assembly 40, processor 42, targeting laser assembly 44 and dosing laser assembly 46.
In some embodiments, undesirable organism 26 may be killed by dosing laser
28. In other embodiments, dosing laser 28 may instead disable organism 26 in a
variety of ways. For example, if it is desired to inhibit spread of malaria, it may be
sufficient to impede a female mosquito’s ability to blood feed, disrupting the disease
cycle. In some embodiments, this may be accomplished by damaging or destroying
the antennae. Damage to the antennae may also inhibit mating behavior, which may
reduce the overall mosquito population if enough mosquitoes in a region can be
dosed. In some embodiments, reproduction may also be slowed or prevented by
impairing fertility of the female or the male mosquito. Radiative treatment may also
impair the metabolic efficiency of mosquitoes or other insects, or may damage
essential body structures such as the wings or eyes without immediately killing the
insect. is a photo of a mosquito wing which has been damaged by laser
treatment.
In some embodiments, rather than or in addition to targeting organisms for
destruction, the system of may be used as a census-taking device. If desired,
the system may be left unattended for a substantial period of time to determine
activity as a function of time of day, weather, season, or other changing
environmental parameters, and flight characteristics of different organisms may be
tracked over time. By analyzing shape, size, wingbeat frequency, wingbeat
harmonics, position, flight patterns, airspeed, or groundspeed, information about
biological properties such as genus, species, gender ratios, age distribution, mating
status, and the like may be determined for the organism population. In some
embodiments, it may be possible to determine disease-carrying status, since it is
expected that disease carriers such as malarial mosquitoes will have different
characteristics perceivable by the system (e.g., flight characteristics, shape, size) due
to body stresses associated with illness. In some embodiments, these characteristics
of disease-carrying organisms may be identifiable via statistical bias (e.g., while the
system may not identify individuals as diseased, it may be able to tell that some
fraction of the individuals observed are diseased). Such embodiments may be useful
for targeting disease mitigation strategies into areas of highest infection rate, for
example. In embodiments including a dosing laser or other countermeasure, in
circumstances where it is undesirable or impractical to incapacitate all mosquitoes (or
other insect pests), discrimination by sex or other biological status may allow more
effective eradication of the population as a whole (for example, by preferentially
targeting gravid females, females ready for mating, or mosquitoes already infected
with malaria). In some embodiments, identification of a particular biological
property (of an individual or a population) may trigger a notification to be sent to a
remote location. For example, if a single Asian Citrus Psyllid is detected in an area
expected to be free of them (e.g., an orchard), the system may notify the farmer (or
any appropriate remote user) so that countermeasures can be taken and defenses
examined for “leaks,” or if the system identifies a noticeable increase in population of
mosquitoes or of malarial mosquitoes in a particular region, it may notify doctors
and/or scientists so that the change can be promptly addressed.
While the embodiments described herein have related to ground-based
systems mounted upon fixed vertical supports, a variety of other design
configurations may be implemented by one of skill in the art. In some embodiments, a
substantial portion of the components or even all of the components may be mounted
upon a single support unit. For example, a single post having lasers and cameras at
the top may illuminate and view a surrounding horizontal ring of retroreflector,
forming a conical or tent-like detection area. For another example, one or more lasers
and cameras may be rotated or translated so as to sweep the narrow camera field of
view across a large volume, so as to detect insects anywhere within a volume (such as
a room); in this case a large area of retroreflector material such as a retroreflective
paint or tape can be applied to one or more walls of the room.
In one approach, one or more components may be mounted on a moving
support such as a ground-based vehicle, air-based vehicle (e.g., a UAV), or other
vehicle. If imager and targeting or dosing lasers are mounted on an airborne vehicle,
it may be impractical to provide a retroreflective surface as described above. In some
such embodiments, organisms may be located by ground-looking radar. For a vehicle
traveling at 50 m/s and scanning a 100 m swath of ground, a relatively modest
transmitter power (in the tens to hundreds of milliwatts) may provide an adequate
resolution for locating organisms for a targeting laser.
In some embodiments, the imager or the detector may receive light that is
produced responsive to the illuminating light. For example, as described in Bélisle, et
al., “Sensitive Detection of Malaria Infection by Third Harmonic Generation
Imaging,” Biophys. J. 94(4):L26-L28 (2008), which is incorporated herein by
reference, certain components of tissue or residue such as biological waste products
(e.g., hemozoin crystals produced by malarial mosquitoes) may produce wavelengths
of light different from the illuminating light through any of a variety effects,
including three photon effects. In one such approach, illuminating light may be
selected to correspond to a response of hemozoin. The detector may then detect light
at a frequency corresponding to a resonance of the hemozoin.
It may be appropriate in some applications to provide a guard region around
the targeting or dosing light beam. In such an approach, an appropriate detection
system may determine the presence of objects or organisms within a region
surrounding the target object. If such an object or organism is detected, the system
may determine that it is inappropriate to activate the targeting or dosing light source,
for example, to prevent damage to such objects or organisms. In one example, the
guard region may be configured to detect the presence of humans or domestic animals
within a selected proximity of the area to be illuminated. Such systems may be
implemented using the illuminating light source, or an alternative light source, such
as an LED or similar source arranged to illuminate a region surrounding the expected
path of the targeting or dosing beam. Alternatively, the imaging system may detect
humans or domestic animals in the field of view and avoid transmitting the targeting
or dosing light beam.
In some cases the illuminating light source may have sufficient power to cause
harm, for example if a person or animal looks directly into the light source. The
system may be configured to detect the presence of large obstructions and turn off or
reduce the power of the illuminating light source before harm is done.
It will be understood that “identification” of organisms (such as mosquitoes
and other insects) on the basis of wingbeat characteristics, morphology, or other
measurements, may be probabilistic in nature. For example, it may be determined
that it is more likely than not that a given organism is a gravid female Anopheles
mosquito, and actions may be taken on that probability, even though other genera,
sexes, or statuses cannot be ruled out.
Maintenance and olfactory testing of mosquito population
We have maintained and tested a population of Anopheles stephensi in an
insectary. The mosquitoes were kept in a maintained environment of a 12h:12h light:
dark cycle; air temperature 80˚F ± 10˚F and 80% ± 10% humidity. Adult mosquitoes
were held in a variety of containers. Breeding populations were placed into 12”x12”
white semi-transparent plastic containers with plastic mesh sides and a front sleeve
for easy access. To sugar feed the adults, we used a Petri dish full of raisins. We
placed a Petri dish lined with 9 cm filter paper, filled with water inside the cage. This
dish functioned as water source as well as an egg laying cup. The bottom of the cage
was covered with absorbent paper towel to limit fungal growth due to urine and blood
excretions of the females.
When adult mosquitoes were about six to ten days old, we blood fed the
females while they were still inside their cages. We used Hemostat brand sheep
blood. The feeding apparatus was a 10 cm Plexiglass Petri dish which had a copper
coil tube glued to the bottom and circulated warm water to keep the blood at body
temperature. The bottom of the feeding apparatus was filled with water at 98˚F. We
stretched parafilm to loosely cover the water in Petri dish. Then sheep blood was
added to the apparatus and another layer of Parafilm was stretched to cover the blood.
A bucket of water between 98 and 100˚F was placed in the insectary. It was hooked
to the copper tubing of the feeding apparatus using plastic tubing and fittings. Inside
the bucket there was an aquarium pump and a heater that circulated the warm water to
the feeding apparatus. The feeding apparatus was placed in a cage through the sleeve.
The sleeve was secured around the plastic tubing and mosquitoes were allowed to
feed until satiation. Once females had taken blood, they were observed to find a quiet
spot to rest and digest. Three to five days later eggs were laid in groups of 50 to 200
on the surface of the water. These eggs hatched after two days. (See, Benedict, M.Q.,
in Molecular Biology of insect disease vectors. Ed. Crampton, Beard and Louis.
Chapman and Hall, London, pp.3-12, 1997, which is incorporated by reference
herein)
Experimental cages, hereinafter referred to as cradle to grave (C2G) boxes,
were made of 12”x12” interconnected clear acrylic. The sides and bottoms of the
boxes were glued together, and they were reinforced by tabs for additional security.
For ease of cleaning and access during manipulation of the mosquitoes, the top of the
cage was not glued into place. There were two 6” diameter openings on opposite
sides of the cage. The one in the front was covered with a sleeve and the one on the
back was lined with fine mesh, providing a texture on which mosquitoes could land.
On the front, 2.5” to the right of the sleeve and 2” below, there was a 0.5” diameter
pipe fitting covered with mesh. This fitting was used to connect a CO tank during
anesthetization of mosquitoes. While the mosquitoes were anesthetized, the lid was
removed and mosquitoes could be handled for experiments.
There are certain advantages of using a cradle to grave box over other types of
mosquito containment cages. Cradle to Grave boxes are clear; they allow the
experimenter to observe behavior or document data without obstructed view. Another
advantage of the box over conventional cage is limiting the number of times
mosquitoes are handled. 50 to 100 pupae were placed in a Cradle to Grave box and
allowed to emerge. Once the adult mosquitoes were four to five days old, they were
ready for experimental manipulations. The port made of 0.5” pipe fitting can be
attached to CO2 for anesthetization; this eliminates the need to chill the mosquitoes,
and consequently condensation does not occur during various methods of cold
application. Our handling experiences suggest using aspirators during mosquito
retrieval may affect their lifespan adversely. In the Cradle to Grave box, there is
typically no need to aspirate mosquitoes into other containers.
White plastic rectangular trays (15” x 7” x 1.5”) were used to contain larvae.
Once the eggs were laid, they were washed carefully into a white tray for hatching.
To provide food for larvae, 50% w/w active (live) baker’s or brewer’s yeast and
ground tropical fish flakes were added to white trays. The trays are filled halfway
with distilled water. Achieving the right density of larvae in trays is known to be
important in their growth and development. The most common problems associated
with overcrowding are longer development time, reduced pupation and eclosion, and
a decrease in pupal weight. Studies have shown that crowded larvae exhibit several
negative effects: lower weight at emergence, quantity of the blood meal and lower
overall fertility rates (Benedict, 1997). If trays are overcrowded, thinning the larvae
is preferred to maintain a healthy population. After the fourth molting, pupae develop.
Pupae were collected daily and placed into the opaque breeding cages for
continuation of the colony, or transferred into clear experimental cages.
Adult mosquitoes were retrieved from their cage into smaller containers using
an aspirator made of two clear tubes connected to an electric pump. These retrieval
boxes were 3.5” x 3.5” x 2.5” and made of clear acrylic. One side of the box had a
2.44” diameter opening which is covered with fine mesh and allowed air flow as well
as providing a textured surface for mosquitoes. One side of the retrieval box had two
0.5” pipe fittings that were used to connect tubes. These pipe fittings could be
plugged with acrylic rods when the aspirator was not in use.
After mosquitoes were anesthetized with CO for experimental purposes, fine
camel brushes were also used to change the position of the mosquitoes.
To identify and assess the olfactory behavior of mosquitoes, we designed a
bioassay, based on an olfactometer similar to that described in Geier et al., Entomol.
Exp. Appl. 92:9-19, 1999 (which is incorporated by reference herein; see also Braks,
et al., Physiological Entomology 26:142-148, 2001, incorporated by reference
herein), which met the following requirements:
1. Monitoring of all behavioral sequences in the host finding process such as
perception, activation, orientation towards the odor source, and landing.
2. Simple and fast testing of many odor samples in a limited time.
3. Easy comparison of extracts from natural odor sources or synthetic attractants
(see, e.g., Miller, et al., In Chemical Ecology of Insects, W. J. Bell, & R. T.
Cardé (eds.), Chapman and Hall, New York, pp. 127–157, 1984; Sutcliffe,
Insect Science and its Application 8: 611–616, 1987, both of which are
incorporated herein by reference).
4. Wide measuring range to differentiate the strength of attractive stimuli.
5. Easy clean-up to avoid contamination caused by previous stimuli (Schreck, et
al., J. Am. Mosquito Control Assoc. 6: 406–410, 1990, which is incorporated herein
by reference).
The olfactometer was constructed out of 7 mm thick transparent acrylic
sheets. Twelve Y-shaped layers were placed on the acrylic base and bolted together
on a metal table. Screened removable chambers were located at each end: a release
chamber at the base of the Y-shape, and two chambers at the end of the arms. A
transparent removable lid was bolted to the layers below and provided containment
for mosquitoes. The resulting construction allowed for easy observation during
experiments.
A 12 V fan was attached to the release chamber providing a wind-tunnel
effect, luring mosquitoes away from the stimulus. Mosquitoes traveled 89 cm to
reach the stimulus chambers.
In a standard experiment, at least 25 female mosquitoes were aspirated into
the release chamber using the human hand as bait. This procedure ensured that all
mosquitoes used in the test were ready to seek for a host. The release chamber was
made of clear acrylic, which was sized 3.22” x 3.22” x 3.24”. Two sides of the release
chamber had acrylic screens, one of which was removable for cleaning or other
manipulation purposes. The release chamber also had two 0.5” pipe fittings to
connect an aspirator or CO source as needed.
Five minutes after the release chamber was attached to the olfactometer, the
test stimulus was presented in one arm while the control chamber remained empty.
At the same moment, the release chamber opened and mosquitoes entered the device.
The fan was then turned on to lure the mosquitoes back into the release chamber. Five
minutes into the experiment, the mosquitoes were counted (those mosquitoes
remaining in the release-, stimulus-, and control chambers, respectively). At the end
of the experiment, CO gas was pumped through the stimulus chambers and
anesthetized mosquitoes transferred back to the insectary.
Olfaction experiments such as those described herein may be used to test
attractants for bringing species within range of the targeting system. They may also
be used to determine whether mosquitoes’ ability to seek human prey has been
affected by dosing with photons as described herein.
Mosquito vulnerabilities
In general, nocturnally active blood-feeding mosquitoes such as the African
malaria mosquito Anopheles gambiae locate and identify their vertebrate hosts
primarily by odor. The olfactory organs in adult female mosquitoes are associated
with the antennae and maxillary palp. These are covered by hair-like sensilla. The
sensilla are innervated by olfactory receptor neurons as well as by mechano-, thermo-,
or hygroreceptor cells. The olfactory cues exhaled in the breath (e.g., carbon dioxide)
or excreted from the skin (e.g., components of sweat) are detected by the sensilla,
allowing the female mosquito to home in on a potential human host. (See, e.g.,
Ghaninia et al., Eur J Neurosci. 26:1611-1623, 2007). The dependence upon the
antennae and maxillary palp for sensing the proximity of a human host suggests that
disruption of these important sensory organs may be a means of preventing
mosquitoes from finding and biting their human victims.
Chemical odorants for use in an olfactometer such as lactic acid or ammonia,
for example, are available from commercial sources and prepared by standard
methods. In some instances, a concentration gradient of odorant from 0.001 to 100
mg/ml, for example, is used to assess the mosquito response. Human sweat for
olfaction experiments may be collected from the foreheads or other body parts of
human volunteers undergoing physical exercise in a warm, humid environment. The
sweat is either frozen immediately to -20° or allowed to incubate at 37°C for several
days. Work from Braks, et al. (referenced above) suggests that while fresh human
sweat can be a mild attractant, sweat that has been “aged” is a particularly potent
attractant. Other methods for extracting skin odorants include continuous swabbing
of human skin with a cotton swab for about 5 minutes or simply inserting a human
extremity (e.g., a finger) into the trapping port (see, Dekker, et al., Medical
Veterinary Entomology 16:91-98, 2002, which is incorporated by reference herein).
In addition to blood meal, female as well as male mosquitoes feed on plant
nectar as an energy source, which they locate chiefly by visual and chemical cues.
Nectar sources do not appear to be as attractive as blood sources, but sugar feeding is
usually necessary and more frequent than blood feeding (see, e.g., Foster & Hancock.
J Am Mosquito Control Assn. 10:288-296, 1994, which is incorporated by reference
herein). As such, the effects of laser treatment on the ability to locate a nectar source
can also be assessed.
The structural integrity of antennae following laser treatment may be assessed
using light microscopy or scanning electron microscopy (see, e.g., Pitts & Zwiebel,
Malaria J. 5:26, 2006, which is incorporated by reference herein). For light
microscopy, the antennae are hand dissected from cold-anesthetized, laser treated or
untreated mosquitoes and placed in 25% sucrose and 0.1% Triton X-100 in water.
The antennae are mounted on microscope slides in this solution, covered with a glass
coverslip, and sealed with, for example, enamel nail polish. Standard light
microscopy at 400x magnification is used to assess the integrity of the antennae.
For scanning electron microscopy, the antennae from either laser treated or
untreated mosquitoes are hand dissected and fixed with 4% paraformaldehyde, 0.1%
Triton X-100 in phosphate buffered saline. The antennae are then dehydrated through
a series of alcohol solutions such as ethanol at 50% to 100% in 10% increments. The
heads are further extracted through a series of ethanol:hexamethyldisilazane (HMDS)
solutions at ratios of 75:25, 50:50, 25:75 and 0:100. The HMDS is removed and the
samples are allowed to dry in a fume hood. The desiccated samples are glued onto
pin mounts with colloidal silver paint and sputter coated for about 30 seconds with
gold-palladium. The samples are viewed using a standard scanning electron
microscope. Alternatively, the antennae are quick frozen in liquid nitrogen and
subsequently freeze dried to remove any water vapor in preparation for cryo-scanning
electron microscopy at -190°C. In some instances, the head or whole mosquito is
used for analysis.
Electroantennography (EAG) is a method for recording electrical potentials
from insect antennae in response to stimuli and can be used to assess the functional
integrity of antennae following treatment with the laser. EAG records the “slow”
changes in potential that are caused by the superposition of simultaneous membrane
depolarizations of numerous receptor cells in response to stimuli. This approach can
provide information on the olfactory perception of the insect. An
electroantennogram can be performed by removing the antenna from either laser
treated or untreated mosquitoes and inserting wires at either ends of the antenna and
amplifying the voltage between. The antenna is exposed to an odorant and any
deflections in the electroantennogram waveform due to sensory response are
recorded. Alternatively, a laser treated or untreated mosquito is left intact and a
ground wire or glass electrode is placed into some part of the body such as the eye,
for example, and a second electrode is attached to the end of the antenna.
Alternatively, all or part of a laser treated or untreated mosquito is fixed on the tip of
a holder with a conducting electrode gel. The tip of the antenna is pushed into a small
drop of the same gel associated with a recording electrode (silver wire; see, e.g., Puri,
et al., J. Med. Entomol. 43:207-213, 2006, which is incorporated by reference herein).
The antenna is exposed to odorant and changes in the electroantennogram waveform
are noted. Using this approach, the normal response to odorants in untreated
mosquitoes can be compared with the response recorded in laser treated mosquitoes.
To assess whether specific sensilla on the antenna or maxillary palp have been
damaged by the laser treatment, odor response at the olfactory sensory level can be
done using sensilla recording. The sensilla contain olfactory receptor neurons and
action potentials of single neurons can be recorded in situ and the olfactory receptor
neurons classified according to their response to various odorant stimuli. In this
technique, microelectrodes are inserted into the base of a sensillum and moved with a
micromanipulator to a position at which electrophysiological activity can be recorded.
The signals are digitized and observed as spikes of activity. The antenna is exposed
to a puff of odorant and the firing frequency of the neuron is recorded. As above, the
normal response to odorants in untreated mosquitoes can be compared with the
response recorded in laser treated mosquitoes.
The antennae of mosquitoes are also important for sensing the proximity of a
potential mate (see Hoy, PNAS 103:16619-16620, 2006; Cator et al., Science
published on line January 8, 2009, both of which are incorporated by reference
herein). More specially, male mosquitoes detect the presence of nearby female
mosquitoes by hearing the female’s flight tones using a special organ called the
Johnston’s organ at the base of each antenna. A mosquito detects the particle velocity
component of a sound field in its immediate vicinity. The antenna, with its fine,
flagellar hairs, senses movements of air particles as they are moved about by
incoming acoustic waves. A male mosquito is able to hear a nearby female’s wing
beat frequency (approximately 300-600 Hz, depending upon the species) and fly off
in pursuit. In the case of Aedes aegypti, both male and female mosquitoes are able to
adjust the harmonic resonance of their thoracic box to produce a harmonic frequency
that is three times that of the female wing beat (400 Hz) and two times that of the
male wing beat (600 Hz), converging at a frequency of 1200 Hz at the time of mating
(Cator et al.). In this instance, mate attraction is acoustically driven and involves
active modulation by both sexes.
During the mating process, the ability to hear the appropriate flight tones of a
nearby female is dependent upon the antennae and associated Johnston’s organ.
Likewise, the ability to generate a wing beat frequency capable of attracting a mate is
dependent upon functional wings. As such, disabling the antennae or wings would
potentially prevent productive mating.
In general, females emerge from the pupal case ready to mate where as their
male counterpart in many species may require several days to reach sexual maturity.
However, in most species, there is a 24-48 hour lag between emergence and mating.
Mating is not needed for egg development and maturation, but in most species eggs
can only be deposited when insemination has occurred. Female mosquitoes usually
mate before taking their first blood meal, although in several anophelines, a large
population of virgins may blood-feed prior to mating. In Aedes aegypti, mating is
accompanied by the transfer of “matrone”, a male hormone which makes the female
refractory to successive matings and induces blood host-seeking behavior. This type
of behavioral change is not consistently noted in An. gambiae. The success of male
mating is determined by fitness, and may have consequences for the number of times
a male can mate. A number of issues regarding mating behavior have not been fully
explored or understood including the cues that control male swarming, male feeding
behavior and fitness, female mate-location behavior, pre- and post-mating behavior,
frequency of multiple-species swarming, factors that prevent hybridization of closely
related species, and factors that control multiple mating (as outlined by Takken et al.,
in “Mosquito mating behaviour”, in Bridging laboratory and field research for
genetic control of disease vectors. pp. 183-188, Ed. G.J. Knols & C. Louis, Springer,
Netherlands, 2006, which is incorporated by reference herein).
Male fitness and associated reproductive success may be a function of an
individual’s ability to find and exploit a nectar source (see, e.g., Yuval et al.,
Ecological Entomology. 19:74-78, 2008, which is incorporated by reference herein).
Males tend to swarm at dusk, a behavior that consumes a considerable amount of
energy relative to resting behavior. Females enter the swarm of males for mating
purposes (see, e.g, Charlwood, et al., J. Vector Ecology 27:178-183, 2003, which is
incorporated by reference herein). Sugar feeding in An. freeborni, for example, takes
place during the night at a time after swarming has concluded and as such nectar
sugars are not immediately available for flight but must be stored in some form. As
such, disrupting the ability to fly or the ability to find or store an energy source will
have deleterious effects on mating success.
Alterations in wing beat frequency in response to laser treatment can be
assessed using a particle velocity microphone as described by Cator, et al. (Science
Published on line January 8, 2009). Either laser treated or untreated mosquitoes are
tethered to the end of an insect pin. When suspended in midair, the mosquitoes
initiate bouts of wing-flapping flight. Sound clips from normal and laser treated
mosquitoes are digitized and compared to assess the effects of laser treatment on
wing beat frequency. Alternatively, high speed photography can be used to assess
changes in wing function.
Thermal stress may be used to alter the normal embryonic development of
mosquito eggs. Huang, et al. demonstrated that subjecting mosquito eggs to
increasing temperatures from 40 to 48°C reduced the viability of the eggs (see, e.g.,
Huang, et al., Malaria J. 5:87, 2006, which is incorporated by reference herein).
Exposure to temperatures of 44-45°C and higher dramatically decrease the number of
eggs that hatched. As such, subjecting the female mosquito to laser induced thermal
stress may also alter the viability of her eggs.
In one set of experiments, female mosquitoes are allowed to blood feed and
are subsequently subjected to laser treatment as described herein. Following a
recovery period and prior to laying of eggs, the female mosquitoes are cold-
anesthetized and the eggs are dissected out and counted. The eggs may be further
subjected to scanning electron microscopy or other forms of microscopy to determine
whether treatment with the laser has disrupted the structural integrity of the eggs. For
example, the various stages of ovogenesis in mosquitoes may be assessed using
scanning electron microscopy (Soumare & Ndiaye. Tissue & Cell. 37:117-124, 2005,
which is incorporated by reference herein). Alternatively, the females are allowed to
lay their eggs following laser treatment. In this instance, the number of eggs laid, the
number of hatched eggs, and the number of viable offspring are compared between
laser treated and untreated individuals.
In a second set of experiments, female mosquitoes are subjected to laser
treatment as described herein prior to blood feeding. After blood feeding, the females
are allowed to lay their eggs and as above, the number of eggs laid and the viability of
the eggs are determined. In these experiments, the number of females that take an
offered blood meal may also be determined in exploring effects on fertility.
Blood feeding is necessary for the process of laying and hatching viable
offspring. Disrupting the ability of the female to access blood meal is anticipated to
reduce the number of viable offspring. As noted above, the female uses olfaction to
find a blood host. As such, in one set of experiments, the blood meal is placed on the
other side of a trap portal through which the mosquito must pass to access food. The
trap portal emits an attracting human odorant such as human sweat or expired carbon
dioxide. The ability of laser treated females to access the blood meal is recorded as is
the number of laid eggs, the number of hatched eggs, and the number of viable
offspring.
In general, the effects of laser treatment on male and female fertility can be
assessed by treating either a population of males or a population of females with laser
energy and allowing the treated individuals of one sex to breed with untreated
individuals of the other sex. As above, the outcome measurement of this assessment
is the number of laid eggs, the number of hatched eggs, and the number of viable
offspring. For the purposes of this experiment, male and female individuals are
treated with laser energy prior to mating. Male and female individuals can be sexed
at the larval stage, allowing for the isolation of single sex populations (see, e.g.,
Emami, et al., J. Vector Borne Dis. 44:245-24, 2007, which is incorporated by
reference herein). For example, male An. stephensi mosquitoes are identified by a
tube-like organ at the 9 abdomen segment as well as two fried egg-shaped structures
in the anterior portion of the segment. In female An. stephensi mosquitoes, the tube-
like organ is smaller and the fried egg-shaped structures are absent. Using a light
microscope, it is possible to segregate the larva into separate male and female
populations. Alternatively, sexing may be done following emergence from the pupal
stage. Adult male mosquitoes can be distinguished from adult female mosquitoes in
that the males have more feathery antennae and have mouthparts not suitable for
piercing skin. The emerged adults in the single sex populations are subjected to laser
treatment and after recover are allowed to breed with untreated individuals of the
opposite sex. The number of copulas is observed and recorded over a specific time
frame. In addition, the number of laid eggs, hatched eggs, and viable offspring are
recorded and may be assessed relative to the number of observed copulations.
Similar experiments can be performed using populations of male and female
mosquitoes that have both been subjected to laser treatment.
Calorespirometry can be used to measure respiration characteristics and
energy metabolism of insects (see, e.g., Acar, et al., Environ. Entomol. 30:811-816,
2001; Acar, et al., Environ. Entomol. 33:832-838, 2004, both of which are
incorporated herein by reference). The rates of respiratory metabolism are
commonly reported as the rates of oxygen (O2) consumption or carbon dioxide (CO2)
production and may be combined with heat production to assess metabolic efficiency.
Analysis is done comparing the response of laser treated and untreated mosquitoes.
The analysis can be done at one specific temperature such as, for example, an ambient
temperature of 27°C. Alternatively, the effects of temperature on metabolic
efficiency of treated and untreated mosquitoes can be assessed by performing the
analysis at various temperatures ranging from about 0°C to about 42°C. In this
instance, temperature acts as a stressor.
A differential, scanning, heat conduction calorimeter is used for
calorespirometry (e.g., Hart Scientific model 7707 or Calorimetry Sciences model
4100, Pleasant Grove, UT). One or more mosquitoes for analysis are weighed and
placed in a small paper cage within a sample ampoule. The cage is used to limit the
mobility of the mosquitoes during analysis. The ampoule is supplied with sufficient
oxygen to support aerobic respiration for at least one hour. Heat production is
measured by the calorimeter and is represented as a function of body weight. CO2
production is assessed by measuring extra heat generated over time when 0.4 M
NaOH is included in the ampoule. The interaction of NaOH with the CO produced
by the respiring tissue generates Na CO and heat. As such, the difference in heat
rate produced by the mosquito sample with and without NaOH represents the heat
rate caused by CO trapping and consequently the rate of CO formation. Analysis
of heat and CO production is performed at various temperatures to assess the effect
of thermal stress on mosquitoes that have been treated with laser energy relative to
untreated controls.
Photonic dosing experiments
A series of experiments examining the vulnerability to radiation of An.
stephensi has been performed. Dosing experiments began by removing the food,
water, and any other materials from the (floor of the) C2G box. Then the box was
moved into the optics room. The mesh holes were loosely covered, and tubing from a
CO tank was hooked to the port on the C2G box. CO was turned on, with the
regulator opened up as wide as possible, resulting in roughly 50 scfh for a minute or
so, until all of the mosquitoes were anesthetized. Then the CO flow was turned
down to a much lower level, typically 7-10 scfh.
is a graph illustrating lethality of various doses of near-IR radiation as
a function of energy density. The diode laser, capable of outputting up to 30W of
808nm light, was manufactured by Coherent, Inc. Optics were used to focus the
beam to roughly 5mm diameter at the mosquito. Pulse duration was varied from
~3ms up to ~25ms, and laser output power was varied from ~15W up to ~30W.
Mosquitoes present in these experiments were predominantly female, although some
males may have been present in some of the experiments. Subjects were exposed to
CO for 8-15 minutes during the experiments. Lethality is measured 24 hours after
dosing.
and are graphs illustrating lethality of various doses of
ultraviolet radiation for different power densities and total energies for female and
male An. stephensi, respectively. The dosing laser for these experiments was a high
power water cooled deep UV laser from Photonix, operating at a wavelength of 266
nm. The data underlying these graphs are summarized in Table 1.
Female Male
# Males # Females Survival % Survival % Power Density Total Energy
@ start @ start 24hrs 24hrs (W/cm^2) (mJ)
23 11 18% 13% 6.94E+06 16.74
26 27 22% 19% 6.94E+06 8.37
12 40 15% 8% 1.78E+07 5.58
34 8 0% 9% 1.78E+07 2.232
11 18% 6% 6.94E+06 2.232
19 12 25% 11% 2.24E+06 1.488
16 81% 43% 3.65E+04 0.286
19 16 75% 37% 3.65E+04 3.3
7 24 83% 29% 2.24E+06 1.24
2 22 77% 50% 2.24E+06 0.992
8 21 95% 100% 6.38E+05 6.2
8 18 100% 88% 6.38E+05 0.992
17 26 88% 65% 6.38E+05 6.2
8 24 0% 0% 6.38E+05 24.8
8 18 0% 0% 2.24E+06 24.8
8 17 35% 0% 1.97E+06 6.696
13 21 90% 77% 1.29E+05 7.75
13 20 95% 92% 1.29E+05 1.395
8 12 100% 100% 6.38E+04 6.2248
7 20 100% 100% 6.94E+05 4.464
4 21 100% 100% 2.24E+05 8.06
4 17 100% 100% 2.24E+05 1.488
4 29 97% 75% 6.94E+05 1.2834
12 17 100% 92% 6.94E+05 0.4464
8 25% 10% 6.94E+06 19.53
23 17 0% 13% 6.94E+06 9.486
22 22 41% 5% 6.94E+06 4.464
22 19 89% 91% 0.00E+00 0
22 19 68% 45% 6.94E+06 1.674
8 29 10% 25% 6.94E+06 13.95
16 29 10% 0% 6.94E+06 5.022
29 90% 30% 2.24E+06 2.232
22 24 38% 9% 2.24E+06 6.944
14 23 22% 21% 2.24E+06 14.88
Table 1
It will be seen that each graph includes two regimes: at lower power densities,
survival fraction is primarily a function of total energy deposited in the insect’s body.
At higher power densities, the energy required to kill an insect decreases, and survival
fraction is primarily a function of power density. It is believed that this is due to the
optical saturation of absorbing molecules (sometimes described as photobleaching) in
the insect’s exoskeleton and other surface layers, and the consequent penetration of
light into interior tissues which are subject to photochemical damage, particularly of
active DNA.
The experiments reported in and use 24-hour survival
fraction of mosquito population as a figure-of-merit. In some embodiments, it may
be sufficient to disable, rather than kill, mosquitoes or other targets, as discussed
elsewhere herein. Further, the life cycle of malaria requires a period of
approximately 11-14 days between infection of a mosquito and transmission to a
human host. Thus, it may be possible to substantially impact malaria rates by
achieving a suitably low 10-day survival fraction, which may require different
energies or power densities than those shown in the reported data. Finally, it is
unknown to what extent anesthetization and handling may affect energies or power
densities required to affect mosquitoes. Experiments similar to those reported in
and but using the tracking and targeting systems described
herein may provide further information about suitable systems for disabling
mosquitoes or other pests.
Trap validation
Systems such as those shown and described herein may be used to measure
the efficacy of traps and to identify the most reliable methods of monitoring insect
populations. The World Health Organization has published “Dengue: Guidelines For
Diagnosis, Treatment, Prevention And Control,” a copy of which is included herewith
and which is incorporated by reference herein, describing in Section 5.2.2 methods of
entomological surveillance of dengue vectors (in particular, Aedes aegypti). Current
methods include sampling larvae and pupae, pupal/demographic surveys, sampling
the adult mosquito population, landing collections, resting collections, sticky trap
collections, oviposition traps, and larvitraps. Some of these methods are expensive
and involve potential ethical concerns (e.g., landing collections, which may involve
human contact with possibly-infected mosquitoes), and it is not well understood how
well any of these methods correlate with adult mosquito populations. The present
invention will permit inexpensive methods such as sticky traps and larvitraps to be
compared with adult populations to determine whether these methods provide
adequate measures of mosquito populations.
Prophetic Example 1: Surveillance of mosquitoes with a photonic system versus an
ovitrap.
A photonic system is used to identify and enumerate the number of
mosquitoes flying over and around an ovitrap device. The efficacy and accuracy of
the photonic system versus the ovitrap device in monitoring the number of
mosquitoes infesting a site are compared. The photonic system includes an imager,
an illumination source, a retroreflector and a processor to locate and identify
mosquitoes. The ovitrap comprises a jar containing water, a mosquito attractant, and
wooden paddles to collect and count eggs deposited by females traversing the site.
The prevalence of a mosquito vector, Aedes aegypti, is measured using a photonic
system and ovitraps.
An oviposition trap (aka ovitrap) is used to detect the presence of mosquitoes
and to monitor the density of mosquitoes in a village. Each ovitrap includes a 350
mL cup painted black with seed germination paper covering the inside of the cup, and
with approximately 175 mL of hay infusion to attract mosquitoes. Methods and
materials to make enhanced ovitraps are described (see e.g., Polson et al., Dengue
Bulletin 26: 178-184, 2002 which is incorporated herein by reference). The ovitraps
are placed approximately one meter off the ground in a sheltered location to avoid
rainfall and sun and left for 48 hours, and then the seed germination paper is removed
and sent to a lab for mosquito egg counting which is done manually with the aid of
magnification. Species identification requires rearing larvae from the eggs. The
ovitrap is reset with fresh germination paper and hay infusion fluid for another 48
hours, and the process is repeated for approximately 4 weeks. To sample a rural
village or a city, 50-262 ovitraps may be required (see e.g., Polson et al., Ibid., and
Regis et al., PLoS ONE 8: e67682 doi:10.1371/journal.pone.0067682 which are
incorporated herein by reference). The surveillance data obtained from the ovitraps
may include: The percentage of traps with mosquito eggs present; the number of
mosquito eggs per ovitrap and the corresponding locations of the positive traps. For
example, ovitraps with hay infusion placed in a village outside of Phnom Penh,
Cambodia detected mosquito eggs in 9%- 67% of outdoor traps over thirteen trap
collections, and a mean number of 4-23 eggs per trap over thirteen collections (see
e.g., Polson et al., Ibid.).
The photonic system employs a high speed CMOS camera, a retroreflector
screen, an illumination source and a processor to acquire and analyze the images
obtained by the system and to determine biological parameters from the mosquito
images. For example, the camera may be a Phantom Flex available from Vision
Research, Wayne, NJ which has a variable shutter speed and frame rates exceeding
10,000 frames/second (see e.g., Datasheet for Phantom Flex camera, which is
incorporated herein by reference). Image acquisition and image processing software
may be provided with the camera or separately. Alternative computer programs to
track and record the flight path of flying insects are described (see e.g., Spitzen et al.,
in Proceedings of Measuring Behavior 2008, Maastricht, The Netherlands, August
26-29, 2008 eds. Spink et al., which is incorporated herein by reference). The
photonic system also includes an illumination source and a retroreflector to efficiently
reflect light from the light source back to the camera (see Fig. 1). For example a light
emitting diode and a reflector surface including retroreflector fabric such as
SCOTCHLIGHT™ Silver Industrial Wash Fabric 9910, available from 3M Corp.,
may be used to backlight insects as they fly across the camera’s field of view.
Microcircuitry on the device analyzes the image data to identify, locate, and
enumerate mosquitoes entering the field of view over a defined period (e.g., 48
hours). For example the identity of a flying insect may be determined by the varying
amplitude of a specific wavelength of light reflected from the insect’s beating wings
as described above. Methods to locate and track mosquitoes in flight based upon
computerized analysis of video camera images are described (see e.g., Spitzen et al.,
Ibid.) Moreover, processing of the video data for mosquitoes allow determination of
multiple parameters including species and sex of flying mosquitoes. For example
male and female Aedes aegypti and Aedes triseriatus mosquitoes may be identified
and differentiated based on digital recordings of light reflecting off the mosquitoes in
flight. Spectral patterns corresponding to wingbeat frequencies may be analyzed to
obtain a plot of frequency versus amplitude, and computer methods are used to
identify species and sex of closely related mosquito species (see e.g., Moore, J. Insect
Behavior, 4(3):391-396 (2005). Robertson, et al., J. Amer. Mosquito Control Assoc.,
18(4):316-320 (2002); and “An Automated Flying-Insect Detection System,” NASA
Technical Briefs, SSC-00192 (2007), available at <www.techbriefs.com/content/
view/2187/34/> all of which are incorporated herein by reference). The photonic
system is constructed as a rectangular enclosure which is placed directly above an
enhanced CDC ovitrap to allow comparison of the two systems for monitoring
mosquitoes.
In comparison, the photonic systems placed over each ovitrap monitor the
airspace over the trap and detect and record image data for each mosquito, male or
female regardless of species and egg-laying status. The imaging data is automatically
processed to determine the sex and species, as well as other biological parameters of
any and all mosquitoes which fly through the airspace over the ovitrap. Data on the
sex, species and numbers of mosquitoes detected at a specific site over a selected
period of time (e.g., 48 hours) is transmitted to a centralized computer or database
immediately. In contrast to ovitrap systems, the counting and reporting of mosquitoes
is automated and dependent on algorithms for image analysis. Moreover, the
detection of adult mosquitoes eliminates indirect estimation of gravid females based
on egg counting. By comparing the data generated by the ovitrap system with that
measured by the photonic system, researchers may gain insight into the accuracy and
efficacy of the ovitrap system.
Prophetic Example 2: Comparison of a Photonic System to Funnel Traps for
Measuring Mosquito Infestation in Wells or Water Containers
A photonic system is used to identify and enumerate the number of adult
mosquitoes flying over and around subterranean wells and water containers. The
photonic system is compared to funnel traps for efficacy and accuracy in monitoring
the number of mosquitoes infesting a site. The photonic system includes an imager,
an illumination source, a retroreflector and a processor to locate, identify and
characterize mosquitoes in flight. The funnel trap is a floating trap which catches
mosquito larvae as they swim to the surface of the well or water container. Larvae
counts are done manually to discriminate mosquito larvae from other insects. The
density of Anopheles mosquitoes is measured in field tests at subterranean wells with
known mosquito infestations using a photonic system versus funnel traps.
Funnel traps are tested in water wells to compare their efficacy and accuracy
in monitoring mosquito infestations. Methods and materials to construct and test
funnel traps are described (see e.g., Russell et al., J. Med. Entomol. 36: 851-855, 1999
which is incorporated herein by reference). For example, a funnel trap is constructed
from a plastic container with a plastic funnel inserted in the lid of the container. The
container serves as a reservoir to collect mosquito larvae which swim upward through
the funnel into the reservoir and are trapped. The funnel trap is approximately 180
mm long and floats with the funnel mouth (185 mm diameter) facing the bottom of
the well. Field tests are done on 100 cm diameter wells. A funnel trap is set on each
well overnight and mosquito larvae are counted manually after approximately 12
hours. Funnel traps sample approximately 20% of the larvae introduced in a well in a
single 12 hour sampling period. In field tests the absolute number of larvae
introduced in the traps is predicted with 84-97 % accuracy with coefficients of
variation between 14-39% when replicate samplings are done. However, single
samplings only allow qualitative prediction of low, medium and high densities of
larvae. Funnel traps are less efficient at sampling different mosquitoes. For example,
Aedes larvae are sampled more efficiently than Culis larvae (e.g., 1.7-2.3 times more
efficient) likely due to differing swimming behavior of the larvae. Also some stages
of mosquito development are sampled less efficiently by funnel traps. For example,
st nd
1 and 2 instar and pupae are trapped at lower efficiency. Funnel trap sampling
efficacy also varies with well diameter and thus complicates prediction of larval
population size. See e.g., Russel et al., Ibid.
The photonic system includes imagers, illumination sources, retroreflectors
and processors to analyze spectral and image data to locate, track, identify and
characterize mosquitoes flying into the field of view. A high speed camera, capable
of 1,000 frames per second with high resolution, and with variable shutter speeds (see
e.g., Datasheet for Phantom Flex camera which is incorporated herein by reference) is
used to detect and characterize mosquitoes at different shutter speeds. For example,
initial detection and tracking of mosquitoes entering the field of view may be done at
approximately 500 frames per second and then imaging of wingbeat frequencies on
the targeted mosquito may be done at 5,000 frames/second. Mosquito wingbeat
frequencies and associated harmonics may range between 500 and 2000 cycles per
second (see e.g., Moore, J. Insect Behavior, 4(3):391-396 (1991) which is
incorporated herein by reference). The photonic system may include illumination
source(s) (e.g., light emitting diodes) and retroreflectors to backlight mosquitoes
entering the field of view. The photonic system may be bounded by rectangular or
cylindrical supports with imagers, illumination sources, lasers, photodiodes and
retroreflectors placed as indicated in Fig. 1. Processors analyze imaging data and
spectral data to locate, identify and track mosquitoes entering the field of view (see
e.g., Spitzen et al., Ibid.), moreover, processors may initiate programmed changes in
the photonic system. For example, identification of a mosquito based on imaging
with the high speed camera at 500 fps may trigger tracking and targeting with a
pulsed laser at 1180 nm to detect hemozoin indicative of malarial infection. The
system may also estimate malarial status on the basis of mosquito behavior, such as
changes in flight paths, speed, host-seeking behavior, altitude, or time of day of
mosquito activity. See, e.g., Cator et al., Trends in Parasitol. 28(11):466-470 (2012),
Lacroix et al., PLOS Biol. 3(9):1590-1593 (2005), Smallegange et al., PLoS ONE
8(5):1-3 (May 2013), all of which are incorporated herein by reference. The
photonic system may be implemented with a rectangular boundary and installed
immediately above water wells containing funnel traps.
Photonic systems are installed over approximately 12 wells containing 1
funnel trap each. The photonic systems monitor the airspace over the wells and
automatically report the number, species, sex, and probable parasite status (e.g.,
Plasmodium positive or negative) of mosquitoes that enter the field of view. For
example, over a period of 48 hours emergent mosquitoes from the well and all other
mosquitoes flying into the field of view are counted and characterized. The data are
automatically transmitted to a central computer for analysis, e.g., comparison to
funnel trap data. After 48 hours the funnel traps are retrieved from the wells and
mosquito larvae are visually identified and counted. The data are manually entered
into a computer and compared to the number of mosquitoes flying over the
corresponding wells. The correlation coefficient for the number of mosquito larvae
and the number of flying mosquitoes detected in the wells is calculated. A photonic
system may provide increased accuracy relative to a funnel trap since the
determination of mosquito species, sex and other characteristics confirms the
identification; also the continuous surveillance of the airspace over the well is
preferable to the coverage of funnel filters (e.g., 2.4% of a 1.2 m diameter well).
Moreover the photonic system is not subject to the variation in behavior of different
mosquito species (e.g., Aedes, Culis, Anopheles) and different larval stages (e.g., see
above and Russel et al., Ibid.) which complicate the funnel trap system. Finally, the
identification of flying mosquitoes infected with a malaria agent, Plasmodium, is
important information obtained with a photonic system that is not available from
analysis of mosquito larvae.
Prophetic Example 3: Comparison of a photonic detection system with a human
landing collection method to monitor mosquitoes.
A photonic system is compared to a human landing catch (HLC) method to
monitor mosquito density in an African village. The photonic system is constructed
to detect, count and characterize any mosquitoes crossing a perimeter established
around selected houses in the village. Individuals in each house are trained to sample
host seeking mosquitoes using a HLC method. The sensitivity and efficacy of each
method for monitoring multiple species of mosquito is compared.
The photonic system is constructed to image mosquitoes in flight and process
the imaging data to identify, enumerate, and characterize the mosquitoes and to report
information on the mosquitoes to a system computer. The photonic system is set up
to monitor a perimeter surrounding each of three houses selected for the study.
Support posts approximately 20 cm x 20 cm x 500 cm high are set approximately 100
m apart to define a perimeter around each house (see Fig. 2). Two high speed
cameras (see e.g., Datasheet for Phantom Flex camera, which is incorporated herein
by reference) are placed facing each other on each side of the perimeter to create a
photonic fence. The fields of view on each side of the perimeter are approximately
500 cm high, 100 m long and 20 cm thick. Each support post is covered with
retroreflective fabric (such as SCOTCHLITE™ 9100 from 3M Corp. in St. Paul,
MN) to provide backlighting to any mosquitoes crossing the field of view, i.e., the
photonic fence. The photonic system may also have a laser light source and a photon
detector incorporated on each side of the perimeter. For example, a Ti:Sapphire laser
producing laser pulses at 1180 nm and a photon detection system may be used to
detect hemozoin, a pigment associated with malarial parasites, e.g., Plasmodium (see
e.g., Belisle et al., Biophys J. 94(4): L26–L28, Feb 15, 2008; doi:
.1529/biophysj.107.125443 which is incorporated herein by reference). The
photonic system established on the perimeter also includes processors, circuitry and
programming to identify, locate, count and determine biological properties of
mosquitoes which cross the perimeter. For example spectral patterns corresponding
to wingbeat frequencies may be analyzed to obtain a plot of frequency versus
amplitude, and computer methods are used to identify species and sex of closely
related mosquito species (see e.g., Moore, J. Insect Behavior, 4(3):391-396 (2005).
Robertson, et al., J. Amer. Mosquito Control Assoc., 18(4):316-320 (2002); and “An
Automated Flying-Insect Detection System,” NASA Technical Briefs, SSC-00192
(2007), available at <www.techbriefs.com/content/view/2187/34/> all of which are
incorporated herein by reference). Detailed information on all mosquitoes crossing
the photonic fence is automatically transmitted to a central computer in real time to
create a record of mosquitoes observed every 12 hours (between 7 pm and 7 am) for 7
days or longer. Importantly, information on the number, species, sex, feeding status,
malarial infection and mating status of the mosquitoes is reported.
A human landing catch (HLC) method is established at each of the houses
with a photonic fence system and the data on mosquitoes detected by both systems is
compared. To collect HLC data an adult male collector exposes his lower limbs and
collects mosquitoes when they land on his legs with an aspirator. The catcher collects
mosquitoes for 45 minutes/hour and rests for 15 minutes. Mosquito collections are
done nightly between 7 pm and 7 am for 7 days or longer. The HLC catcher collects
at an indoor site and an outdoor site within the perimeter of the photonic fence.
Aspirated mosquitoes are processed to identify sex and species by morphology with a
dissecting microscope. Abdominal status is classified as fed, unfed, gravid or partly
gravid. For example, male and female Anopheles are sorted, and females are
analyzed for malarial (circumsporozite) proteins using an ELISA assay. Also
polymerase chain reaction (PCR) is used to identify mosquito subspecies. Methods
and materials to conduct HLC, aspirate and process mosquitoes are described (see
e.g., Sikaala et al., Parasites and Vectors 6:91, 2013 online at:
<www.parasitesandvectors.com/content/6/1/91> which is incorporated herein by
reference). Data on mosquitoes collected with HLC for 12 hours each night over 7
days is entered into a centralized computer and compared to photonic fence data
collected over the same time frame.
The HLC method and the photonic fence are compared with respect to: the
absolute number of mosquitoes detected for each species, the number of female
mosquitoes, the number of infected mosquitoes (Plasmodium), the number of fed vs.
unfed mosquitoes, and the mating status of the female mosquitoes. The efficacy and
accuracy of the photonic system versus the HLC may depend on the diligence and
stamina of the HLC catchers who collect 12 hours per night for 7 days or more. Also
the risk of infection by Plasmodium and other vector-borne diseases is a major
drawback of HLC.
In a general sense, those skilled in the art will recognize that the various
aspects described herein which can be implemented, individually or collectively, by a
wide range of hardware, software, firmware, or any combination thereof can be
viewed as being composed of various types of “electrical circuitry.” Consequently, as
used herein, “electrical circuitry” includes, but is not limited to, electrical circuitry
having at least one discrete electrical circuit, electrical circuitry having at least one
integrated circuit, electrical circuitry having at least one application specific
integrated circuit, electrical circuitry forming a general purpose computing device
configured by a computer program (e.g., a general purpose computer configured by a
computer program which at least partially carries out processes or devices described
herein, or a microprocessor configured by a computer program which at least partially
carries out processes or devices described herein), electrical circuitry forming a
memory device (e.g., forms of memory (e.g., random access, flash, read only, etc.)),
or electrical circuitry forming a communications device (e.g., a modem,
communications switch, optical-electrical equipment, etc.). Those having skill in the
art will recognize that the subject matter described herein may be implemented in an
analog or digital fashion or some combination thereof.
Those skilled in the art will recognize that at least a portion of the devices or
processes described herein can be integrated into an image processing system. Those
having skill in the art will recognize that a typical image processing system generally
includes one or more of a system unit housing, a video display device, memory such
as volatile or non-volatile memory, processors such as microprocessors or digital
signal processors, computational entities such as operating systems, drivers,
applications programs, one or more interaction devices (e.g., a touch pad, a touch
screen, an antenna, etc.), control systems including feedback loops and control motors
(e.g., feedback for sensing lens position or velocity; control motors for
moving/distorting lenses to give desired focuses). An image processing system may
be implemented utilizing suitable commercially available components, such as those
typically found in digital still systems or digital motion systems.
Those skilled in the art will recognize that at least a portion of the devices or
processes described herein can be integrated into a data processing system. Those
having skill in the art will recognize that a data processing system generally includes
one or more of a system unit housing, a video display device, memory such as
volatile or non-volatile memory, processors such as microprocessors or digital signal
processors, computational entities such as operating systems, drivers, graphical user
interfaces, and applications programs, one or more interaction devices (e.g., a touch
pad, a touch screen, an antenna, etc.), or control systems including feedback loops
and control motors (e.g., feedback for sensing position or velocity; control motors for
moving or adjusting components or quantities). A data processing system may be
implemented utilizing suitable commercially available components, such as those
typically found in data computing/communication or network
computing/communication systems.
In some implementations described herein, logic and similar implementations
may include software or other control structures. Electronic circuitry, for example,
may have one or more paths of electrical current constructed and arranged to
implement various functions as described herein. In some implementations, one or
more media may be configured to bear a device-detectable implementation when such
media hold or transmit device-detectable instructions operable to perform as
described herein. In some variants, for example, implementations may include an
update or modification of existing software or firmware, or of gate arrays or
programmable hardware, such as by performing a reception of or a transmission of
one or more instructions in relation to one or more operations described herein.
Alternatively or additionally, in some variants, an implementation may include
special-purpose hardware, software, firmware components, or general-purpose
components executing or otherwise invoking special-purpose components.
Specifications or other implementations may be transmitted by one or more instances
of tangible transmission media as described herein, optionally by packet transmission
or otherwise by passing through distributed media at various times.
Alternatively or additionally, implementations may include executing a
special-purpose instruction sequence or invoking circuitry for enabling, triggering,
coordinating, requesting, or otherwise causing one or more occurrences of virtually
any functional operations described herein. In some variants, operational or other
logical descriptions herein may be expressed as source code and compiled or
otherwise invoked as an executable instruction sequence. In some contexts, for
example, implementations may be provided, in whole or in part, by source code, such
as C++, or other code sequences. In other implementations, source or other code
implementation, using commercially available or techniques in the art, may be
compiled/implemented/translated/converted into a high-level descriptor language
(e.g., initially implementing described technologies in C or C++ programming
language and thereafter converting the programming language implementation into a
logic-synthesizable language implementation, a hardware description language
implementation, a hardware design simulation implementation, or other such similar
mode(s) of expression). For example, some or all of a logical expression (e.g.,
computer programming language implementation) may be manifested as a Verilog-
type hardware description (e.g., via Hardware Description Language (HDL) or Very
High Speed Integrated Circuit Hardware Descriptor Language (VHDL)) or other
circuitry model which may then be used to create a physical implementation having
hardware (e.g., an Application Specific Integrated Circuit). Those skilled in the art
will recognize how to obtain, configure, and optimize suitable transmission or
computational elements, material supplies, actuators, or other structures in light of
these teachings.
In one embodiment, several portions of the subject matter described herein
may be implemented via Application Specific Integrated Circuits (ASICs), Field
Programmable Gate Arrays (FPGAs), digital signal processors (DSPs), or other
integrated formats. However, those skilled in the art will recognize that some aspects
of the embodiments disclosed herein, in whole or in part, can be equivalently
implemented in integrated circuits, as one or more computer programs running on
one or more computers (e.g., as one or more programs running on one or more
computer systems), as one or more programs running on one or more processors (e.g.,
as one or more programs running on one or more microprocessors), as firmware, or as
virtually any combination thereof, and that designing the circuitry or writing the code
for the software and or firmware would be well within the skill of one of skill in the
art in light of this disclosure. In addition, those skilled in the art will appreciate that
the mechanisms of the subject matter described herein are capable of being
distributed as a program product in a variety of forms, and that an illustrative
embodiment of the subject matter described herein applies regardless of the particular
type of signal bearing medium used to actually carry out the distribution. Examples
of a signal bearing medium include, but are not limited to, the following: a recordable
type medium such as a floppy disk, a hard disk drive, a Compact Disc (CD), a Digital
Video Disk (DVD), a digital tape, a computer memory, etc.; and a transmission type
medium such as a digital or an analog communication medium (e.g., a fiber optic
cable, a waveguide, a wired communications link, a wireless communication link
(e.g., transmitter, receiver, transmission logic, reception logic, etc.), etc.).
It will be understood that, in general, terms used herein, and especially in the
appended claims, are generally intended as “open” terms (e.g., the term “including”
should be interpreted as “including but not limited to,” the term “having” should be
interpreted as “having at least,” the term “includes” should be interpreted as “includes
but is not limited to,” etc.). It will be further understood that if a specific number of
an introduced claim recitation is intended, such an intent will be explicitly recited in
the claim, and in the absence of such recitation no such intent is present. For
example, as an aid to understanding, the following appended claims may contain
usage of introductory phrases such as “at least one” or “one or more” to introduce
claim recitations. However, the use of such phrases should not be construed to imply
that the introduction of a claim recitation by the indefinite articles “a” or “an” limits
any particular claim containing such introduced claim recitation to inventions
containing only one such recitation, even when the same claim includes the
introductory phrases “one or more” or “at least one” and indefinite articles such as
“a” or “an” (e.g., “an imager” should typically be interpreted to mean “at least one
imager”); the same holds true for the use of definite articles used to introduce claim
recitations. In addition, even if a specific number of an introduced claim recitation is
explicitly recited, it will be recognized that such recitation should typically be
interpreted to mean at least the recited number (e.g., the bare recitation of “two
images,” or “a plurality of images,” without other modifiers, typically means at least
two images). Furthermore, in those instances where a phrase such as “at least one of
A, B, and C,” “at least one of A, B, or C,” or “an [item] selected from the group
consisting of A, B, and C,” is used, in general such a construction is intended to be
disjunctive (e.g., any of these phrases would include but not be limited to systems that
have A alone, B alone, C alone, A and B together, A and C together, B and C
together, or A, B, and C together, and may further include more than one of A, B, or
C, such as A , A , and C together, A, B , B , C , and C together, or B and B
1 2 1 2 1 2 1 2
together). It will be further understood that virtually any disjunctive word or phrase
presenting two or more alternative terms, whether in the description, claims, or
drawings, should be understood to contemplate the possibilities of including one of
the terms, either of the terms, or both terms. For example, the phrase “A or B” will
be understood to include the possibilities of “A” or “B” or “A and B.”
While various aspects and embodiments have been disclosed herein, other
aspects and embodiments will be apparent to those skilled in the art. The various
aspects and embodiments disclosed herein are for purposes of illustration and are not
intended to be limiting, with the true scope and spirit being indicated by the following
claims.
Claims (30)
1. A system for tracking airborne organisms, comprising: an imager having an image resolution and a field of view; a backlight source configured to be placed in the field of view of the imager; a processor configured to analyze one or more images captured by the imager including at least a portion of the backlight source, the processor being configured to identify a biological property of an organism in the field of view of the imager using at least one datum selected from the group consisting of characteristic frequency, harmonic amplitude, shape, size, airspeed, ground speed, and location; and a detector configured to detect an organism in the field of view of the imager, wherein at least one of the imager and the detector is configured to collect color data and to use the collected color data to determine a probable engorgement status of the organism.
2. The system of claim 1, further comprising a forward-facing light source configured to illuminate the organism.
3. The system of claim 1, wherein the backlight source includes a retroreflector.
4. The system of claim 1, wherein the backlight source is a retroreflector.
5. The system of claim 1, wherein the detector includes a photodiode.
6. The system of claim 5, further comprising a targeting light source configured to be directed at the organism, wherein the photodiode is configured to detect light from the light source reflected from the organism or light from the backlight source.
7. The system of claim 6, wherein the targeting light source is configured to be directed at the organism from a plurality of directions.
8. The system of claim 1, wherein the detector includes a quad cell photodiode.
9. The system of claim 1, wherein the detector is configured to detect a signal indicative of a distance from the imager to the organism.
10. The system of claim 9, wherein the processor is configured to determine a distance from the imager to the organism using the signal detected by the detector.
11. The system of claim 9, further comprising a second processor configured to determine a distance from the imager to the organism using the signal detected by the detector.
12. The system of claim 9, further comprising a plurality of targeting light sources differing in position, wherein the detector is configured to detect shadows cast by the organism in each light source.
13. The system of claim 9, wherein the detector includes a plurality of optical position sensing devices configured to provide range information by triangulation of the organism.
14. The system of claim 1, wherein the detector has a bandwidth greater than one- half a frame rate of the imager.
15. The system of claim 1, wherein the detector has a bandwidth less than or equal to a frame rate of the imager.
16. The system of claim 1, wherein the detector has an image resolution less than the image resolution of the imager.
17. The system of claim 1, wherein the detector has an image resolution greater than the image resolution of the imager.
18. The system of claim 1, wherein the processor is configured to identify a genus of the organism.
19. The system of claim 1, wherein the processor is configured to identify a species of the organism.
20. The system of claim 1, wherein the processor is configured to identify a sex of the organism.
21. The system of claim 1, wherein the processor is configured to identify an age of the organism.
22. The system of claim 1, wherein the processor is configured to identify a biological property of the organism selected from the group consisting of mating status, gravidity, feeding status, and health status.
23. The system of claim 1, further comprising a disabling system responsive to the identified property configured to disable the organism.
24. A method of tracking airborne organisms, comprising: acquiring a first image having a first image resolution from an imager, the imager having a backlight source in its field of view; determining that the image includes an organism at a location; acquiring a second image having a second image resolution including color data; and determining probable engorgement status of the organism using the second image, wherein: the first image resolution differs from the second image resolution; or the first image is acquired at a first frame rate, the second image is acquired at a second frame rate, and the first and second frame rates differ from one another; or the second image includes color data not included in the first image.
25. The method of claim 24, wherein the backlight source includes a retroreflector.
26. The method of claim 24, wherein the backlight source is a retroreflector.
27. The method of claim 24, wherein determining the probable engorgement status of the organism using the second image includes using the color data to determine the probable engorgement status.
28. The method of claim 24, wherein acquiring the second image includes using a photodiode to sense light from the second region.
29. The method of claim 24, wherein acquiring the second image includes acquiring the second image with the imager.
30. The method of claim 24, wherein the first image does not include color data.
Applications Claiming Priority (3)
Application Number | Priority Date | Filing Date | Title |
---|---|---|---|
US14/255,119 US9946922B2 (en) | 2009-01-15 | 2014-04-17 | Photonic fence |
US14/255,119 | 2014-04-17 | ||
PCT/US2015/025981 WO2015160958A1 (en) | 2014-04-17 | 2015-04-15 | Photonic fence |
Publications (2)
Publication Number | Publication Date |
---|---|
NZ726087A NZ726087A (en) | 2021-02-26 |
NZ726087B2 true NZ726087B2 (en) | 2021-05-27 |
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