Review on Wearable Technology Sensors Used in Consumer Sport Applications
<p>Block diagram example of a Fitness wearable’s process. This shows the example block diagram in how fitness wearable technology can be used for lifestyle applications (weight, calories burned, heart rate, speed, etc.). The users will have their activity monitored via sensors, input some of the data themselves (food eaten), which can then be communicated to a smart phone and to the provider’s cloud service. The data then get processed, thus they become useful for the user to understand. This is fed back into either the paired smart phone or the wearable itself, depending on type of display.</p> "> Figure 2
<p>Wearable technology market share; data adapted from Grandview Research [<a href="#B12-sensors-19-01983" class="html-bibr">12</a>]. This shows how the global wearable sensors market share is divided.</p> "> Figure 3
<p>Worldwide wearable shipments projected 2020; data adapted from Statista plot [<a href="#B19-sensors-19-01983" class="html-bibr">19</a>]. This figure shows how wrist wear will remain a popular wearable. This could be due to it replacing traditional watches, which consumers have worn for years. If this forecast continues past 2020, then more manufacturers will look to improve on this element alone, but depending on positive consumer feedback, they may even find another body part that can be used for future device placements.</p> "> Figure 4
<p>Sensors market share; data adapted from Grandview Research [<a href="#B12-sensors-19-01983" class="html-bibr">12</a>].</p> "> Figure 5
<p>Battery consumption states in wearables (%); data adapted from Maxim Integrated [<a href="#B69-sensors-19-01983" class="html-bibr">69</a>].</p> "> Figure 6
<p>Example of potential battery consumption rate changes during the day for both wearables.</p> "> Figure 7
<p>Block diagram example of wearable technology framework.</p> "> Figure 8
<p>Block diagram example of a medical wearable’s process.</p> "> Figure 9
<p>Percentage of A&E attendances for sport injuries by age group; data adapted from Nhs.uk [<a href="#B93-sensors-19-01983" class="html-bibr">93</a>].</p> ">
Abstract
:1. Introduction
1.1. Overview of Technology
1.2. Market
2. Sensors
2.1. Microcontroller
2.2. Accelerometer
2.3. Gyroscopes
2.4. Magnetometers
2.5. Global Positioning System (GPS)
2.6. Heart Rate Sensors
2.7. Pedometers
2.8. Pressure Sensors
3. Electronic Applications
3.1. Important Factors
3.2. Sensor Calculations
- s[t]: distance is a function of time,
- v[t] = S’[t]: velocity becomes a function of time (differentiating distance once),
- a[t] = v’[t]: acceleration becomes a function of velocity (differentiating velocity once),
- a[t] = v’[t] = s’’[t]: acceleration becomes a function of distance (differentiating distance twice).
3.3. Sport Consumer Wearables
3.4. Monitored Data
3.5. Injury Tracking
4. Review
Acknowledgments
Conflicts of Interest
References
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Wearable | Accelerometer | Gyroscope | Heart Rate Monitor | GPS | Smart Category | Application | Body Place | Other Sensors |
---|---|---|---|---|---|---|---|---|
Apple Watch 2 | x | x | x | Watch | Lifestyle | Wrist | Speaker | |
Fitbit | x | x | x | Watch | Fitness | Wrist | Photodiode | |
Nintendo Joycon | x | x | Controller (modular) | Gaming | Hand * | IR sensor, NFC | ||
PlayStation VR | x | x | Eye wear | Gaming | Head | Microphone, speaker | ||
OM Bra | x | x | x | Clothing | Medical | Upper body | Pedometer | |
RealWear HMT | x | x | x | Ear wear | Industrial | Head | Microphone, Speaker, camera | |
HexoSkin | x | x | Clothing | Fitness | Upper body | Pedometer, ECG sensor, Thermometer | ||
Vuzix AR3000 | x | x | x | Headwear | Medical | Head | Camera, Magnetometer, microphone | |
Google Glass | x | x | x | Eye wear | Industrial | Head | Magnetometer, microphone, speaker, light sensors, IR sensor, Camera | |
Samsung Gear S3 | x | x | x | x | Watch | Lifestyle | Wrist | Barometer, Light sensor |
Wireless Technology for Wearables | Cost ($) | Power Consumption | Range (m) | Bandwidth | Bit Rate (Mbit/s) | Physical Size | Wearable Industry |
---|---|---|---|---|---|---|---|
Bluetooth LE | 5–35 | Low | ~100 | Low | 0.12–2 | Small | Sport |
Near Field communication | 25–100 | Low (higher with passive tag) | ~0.2 | Low | 0.4 | Small | Medical Lifestyle |
Bluetooth classic | 5–35 | Moderate | ~100 | High | 1–3 | Small | Lifestyle |
ANT | 15–40 | Low | ~30 | Low | 0.12–0.6 | Small | Sport |
ZigBee | 4–20 | Low | 10–100 | Low | 0.25 | Small | Industrial |
Wi-Fi | 50–120 | Very high | 10–70 | High | 2–54 | Small | Industrial Lifestyle |
Wearable | 06:00 | 09:00 | 12:00 | 15:00 | 18:00 | 21:00 | 24:00 | 06:00 |
---|---|---|---|---|---|---|---|---|
Fitbit | Wake up | Eaten, travelled to work | Eating lunch, walk outside of work | Been at desk for 2 h (idle) | After Work finished, Workout at Gym | Dinner eaten, resting at home | Already in Sleep | Wake up |
Viper Pod | Analyzing previous performance | Charging, setting up for today | Training starts | Training finished, analysis feedback |
Sensor | Acceleration (m/s2) | Velocity (m/s) | Distance (m) | Angular Velocity (rad/s) | Angular Acceleration (rad/s2) | Relative Angle (rad) | Absolute Angle (rad) | Force (N) | Moment (Nm) |
---|---|---|---|---|---|---|---|---|---|
Accelerometer | Measured | Derived | Derived (2x) | - | - | - | - | Mass derived | |
Gyroscope | - | - | - | Measured | Derived | Difference calculated | Integrated | - | Inertia derived |
Sports Wearable | Accelerometer | Gyroscope | Magnetometer | Heart Rate Monitor | GPS | Position |
---|---|---|---|---|---|---|
Fitbit | x | x | x | x | Wrist | |
Zepp Play | x | x | x | Equipment * | ||
Lumo Run | x | x | x | Lower back | ||
Optimeye | x | x | x | Back (Vest) | ||
PlayerTek | x | x | x | Back (Vest) | ||
Viper POD | x | x | x | Back (Vest) | ||
Adidas MiCoach | x | x | Ball |
Zepp Play | Accelerometer Type | Gyroscope Type | Position | Sport Specific Attributes Tracking |
---|---|---|---|---|
Football | 3 axis accelerometers | 3 axis gyroscopes | Calf | Sprints, Distance, Kicks, Top speed, Loads |
Baseball | Dual accelerometer | Dual 3 axis Gyroscope | Handle of Bat | Bat speed, Accuracy, projectile, hand speed, attack angle, vertical angle, time to impact |
Golf | Dual Accelerometer | 3 axis gyroscopes | Top of glove | Club speed, Hand plane, Downswing, Backswing, hip rotation, Tempo ratio |
Tennis | Dual accelerometer | Dual 3 axis gyroscope | Handle of racket | Ball speed, ball spin, serve, forehand/backhand, topspin, drive, active time, calories, slice |
Attributes IMU Sensor Measures | Football | Athletics | Baseball | Basketball |
---|---|---|---|---|
Number of Sprints | Strikers, midfielders | Relay | Base runners | All |
Vertical acceleration | Forward wings, Full backs | Sprinters, Marathon runners, long jump, high jump | All batters | All |
Top speed | Strikers, forward wings, wing backs, defenders | All runners | All batters, short stop, outfielders | Power/small forwards |
Distance | Forwards, midfielders, defenders | Marathon, sprinters, relay | Outfielders | All |
Intensity Distance | Forwards, defensive midfielders | Sprinters, relay, marathon, heptathlon | Shortstop, outfielders, all batters | All |
Vertical Jump | Forwards, defenders, goalkeepers | High jump, long jump, hurdles, heptathlon | Outfielders, shortstop, all basemen | All |
Horizontal jump | Goalkeepers | High jump, Long jump, heptathlon | Short stop, all basemen, catcher | Point guard, post |
Hand speed | Goalkeepers | Heptathlon, javelin | Power bats, pitchers | Forwards |
Hip rotation (kick speed) | Power Kick specialists | Javelin, heptathlon | Pitchers | Post |
Trajectory | All (freekick specialists) | heptathlon | All batters, pitchers | Shooting guard |
Backswing | Power kick specialists | High jump, long jump, hurdles, heptathlon | All batters | All |
Forward swing | Power kick specialists | High jump, long jump, hurdles, heptathlon | All batters | All |
Biomechanical Factors Leading to Injury | Sport | Motion and Possible Injury Example | Sensors |
---|---|---|---|
Falls | ALL | Dangerous drop of body weight or collision | IMU |
Excessive loads on leg (feet, knees) | Football Basketball American football/Rugby Cycling/Athletics Ice hockey/Figure skating | Dangerous running methods Excessive jumping (vertical) Incorrect agile sprints Unbalance loads on feet Dangerous skating elevations | IMU, pressure |
Excessive load on arm (forearm, biceps, hands) | Boxing Baseball Basketball | Incorrect contact elevation Consecutive fast ball pitching Slam Incorrect pitching balance can lead to loads on joints Dunking too hard | IMU, pressure |
Stress | ALL | Irregular heart/respiratory rate, blood pressure | Heart rate monitor, IR sensor |
Arm speed | Tennis Baseball/Golf | Incorrect rapid dangerous incident angle swings Sudden irregular forward swings | Gyroscope, Accelerometer |
Kick speed | Football/American football/Rugby | Improper technique can lead to cramps | Gyroscope, Accelerometer |
Angular Collision | American football/Ice hockey/Rugby | Due to tackling nature, concussions occur | Gyroscope, Accelerometer |
Excessive rotation arm | Baseball Tennis Boxing | rapid curve ball/slider pitching/Backswing motion (batting) Dangerous serving, back hand strokes. Too fast in combinations can exert force incorrectly on joints | Gyroscope, Accelerometer |
Excessive rotation leg | Cycling Football/Rugby/American Football | Incorrect balance whilst pedalling Vigorous kick elevation can cause muscle strains | Gyroscope, Accelerometer |
Abnormal body temperature | ALL (water sports included) | Change in body temperature can be due to an accident or environmental conditions | Thermistor GPS |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Aroganam, G.; Manivannan, N.; Harrison, D. Review on Wearable Technology Sensors Used in Consumer Sport Applications. Sensors 2019, 19, 1983. https://doi.org/10.3390/s19091983
Aroganam G, Manivannan N, Harrison D. Review on Wearable Technology Sensors Used in Consumer Sport Applications. Sensors. 2019; 19(9):1983. https://doi.org/10.3390/s19091983
Chicago/Turabian StyleAroganam, Gobinath, Nadarajah Manivannan, and David Harrison. 2019. "Review on Wearable Technology Sensors Used in Consumer Sport Applications" Sensors 19, no. 9: 1983. https://doi.org/10.3390/s19091983
APA StyleAroganam, G., Manivannan, N., & Harrison, D. (2019). Review on Wearable Technology Sensors Used in Consumer Sport Applications. Sensors, 19(9), 1983. https://doi.org/10.3390/s19091983