A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring
Abstract
:1. Introduction
2. Design Fundamentals for Accelerometry-Based Wearable Motion Detectors
2.1. Accelerometry: Principles and Sensors
2.1.1. Piezoresistive accelerometers
2.1.2. Piezoelectric accelerometers
2.1.3. Differential capacitive accelerometers
2.2. Sensor Placement
3. Capabilities of Wearable Systems Using Accelerometry Measurement
3.1. Posture and Movement Classification
3.2. Estimation of Energy Expenditure
3.3. Fall Detection and Balance Control Evaluation
4. Review of Current Products
(1) SenseWear (BodyMedia Inc.)
(2) CT1 and RT3 (StayHealthy Inc.)
(3) AMP 331 (Dynastream Innovations Inc.)
(4) GT3X, GT1M (ActiGraph LLC)
(5) StepWatch (Orthocare Innovations)
(6) activPAL (PAL Technologies Ltd.)
(7) IDEEA (MiniSun)
5. Conclusions
References
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SenseWear | CT1/RT3 | AMP331 | GT3X/GT1M | StepWatch | activPAL | IDEEA | |
---|---|---|---|---|---|---|---|
Size (mm) | 88.4 × 56.4 × 24.1 | 71 × 56 × 28 | 71.3 × 24 × 37.5 | 38 × 37 × 18 | 75 × 50 × 20 | 53 × 35 × 7 | 70 × 54 × 17 |
Weight (g) | 82.2 | 71.5 | 50 | 27 | 38 | 20 | 59 |
Accelerometer type | na | Piezoelectric | na | na | na | piezoresistive | piezoelectric |
Number of accelerometer | 1 | 1 | 2 | 1 | 1 | 1 | 5 |
Number of accelerometer axis | 2 | 1/3 | 1 uni-axis and 1 dual-axis | 3/1 | 2 | 1 | 2 |
Sensor placement | Upper arm | Waist | Ankle | Waist or wrist | Ankle | Thigh | Chest, thigh, feet |
Sampling rate | 32 Hz | 0.017–1 Hz | na | 30 Hz (12 bit) | 128 Hz | 10 Hz (8 bit) | 32 Hz |
Sensitivity range | 2 g | na | na | 0.05–2.5 g | na | 2 g | 5 g |
Battery type | 1.5 V AAA × 1 | 1.5V AAA × 1 | na | 3.7 V Lithium ion/Lithium Polymer | 750 mAh Lithium | 3 V li-polymer rechargeable | 1 1.5 V AA |
Battery life | 3 days (continuous) | 30 days | na | 20 days | na | 7–10 days | 60 hrs |
Data transmission | RF/USB | USB (docking tation) | 916 MHz RF (USB wireless adapter) | USB | USB (docking station) | USB (ducking station) | USB |
Data storage capacity | na | 3 hours to 21 days (dependant on data resolution and collection) | na | 16 MB (or 40 days) | 2 months | na | 7 days |
Reported parameters | EE estimation, activity duration, sleep duration | Activity intensity, EE, MET | Steps, cadence, walking speed, stride length, distance, EE | Activity counts, steps, MET, activity intensity level | Steps gait characteristics | Sedentary and upright time, steps, stepping time, cadence, sit-to-stand activities, MET, PAL, kCal | Activity types, gait types, EE |
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Yang, C.-C.; Hsu, Y.-L. A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring. Sensors 2010, 10, 7772-7788. https://doi.org/10.3390/s100807772
Yang C-C, Hsu Y-L. A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring. Sensors. 2010; 10(8):7772-7788. https://doi.org/10.3390/s100807772
Chicago/Turabian StyleYang, Che-Chang, and Yeh-Liang Hsu. 2010. "A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring" Sensors 10, no. 8: 7772-7788. https://doi.org/10.3390/s100807772