| Literature DB >> 33053827 |
Chih-Lung Lin1, Wen-Ching Chiu1, Ting-Ching Chu1, Yuan-Hao Ho1, Fu-Hsing Chen1, Chih-Cheng Hsu1, Ping-Hsiao Hsieh2, Chien-Hsu Chen3, Chou-Ching K Lin4, Pi-Shan Sung4, Peng-Ting Chen5.
Abstract
This work presents a fall detection system that is worn on the head, where the acceleration and posture are stable such that everyday movement can be identified without disturbing the wearer. Falling movements are recognized by comparing the acceleration and orientation of a wearer's head using prespecified thresholds. The proposed system consists of a triaxial accelerometer, gyroscope, and magnetometer; as such, a Madgwick's filter is adopted to improve the accuracy of the estimation of orientation. Moreover, with its integrated Wi-Fi module, the proposed system can notify an emergency contact in a timely manner to provide help for the falling person. Based on experimental results concerning falling movements and activities of daily living, the proposed system achieved a sensitivity of 96.67% in fall detection, with a specificity of 98.27%, and, therefore, is suitable for detecting falling movements in daily life.Entities:
Keywords: fall detection; head-mounted devices; orientation filter; signal detecting and processing; triaxial accelerometer; triaxial gyroscope; triaxial magnetometer
Mesh:
Year: 2020 PMID: 33053827 PMCID: PMC7600986 DOI: 10.3390/s20205774
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1(a) Block diagram of proposed system; (b) Sensing axes of accelerometer, gyroscope, and magnetometer.
Manufacturer, specifications, and configuration information of applied components.
| Component Name | Manufacturer | Specifications and Configuration | |
|---|---|---|---|
|
| ATMEGA328P-MU | Atmel, San Jose, CA, USA | Internal resistance–capacitance oscillator at 8 MHz |
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| MPU6050 | InvenSense, San Jose, CA, USA | Full-scale range: |
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| |||
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| HMC5883L | Honeywell Aerospace, Phoenix, AZ, USA | Field range: ± 0.9 G |
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| ESP8266 (ESP-12e) | Expressif, Shanghai, China | Standard: IEEE 802.11b/g/n |
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| MIC5219 | Microchip, Chandler, AZ, USA | Regulated voltage: 3.3 V |
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| 702030 | - | Capacity: 400 mAh |
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| TP4056 | TPower Semiconductor, | Charging current: 500 mA |
Current consumption and operation mode of main components implemented in proposed system.
| Component | Mode | Current Consumption | Period |
|---|---|---|---|
|
| Active mode | 3.58 mA (3.3 V @ 8 MHz) | 20 ms out of every 50 ms |
| Sleep mode with watchdog timer enabled | 4.5 µA (3.3 V @ 8 MHz) | 30 ms out of every 50 ms | |
|
| Low-power mode | 60 µA (20 Hz sampling rate) | Always on |
|
| Normal operation mode | 3.60 mA | Always on |
|
| Normal operation mode | 100 µA | Always on |
|
| Transmission mode | 120 mA | 100 ms out of every 600 s |
| Power down mode | 0.5 µA | 599.9 s out of every 600 s |
Figure 2(a) Root Mean Square (RMS) acceleration during falling movement; (b) Pitch and roll. angles during falling movement.
Figure 3Flowchart of proposed scheme for threshold-based fall detection.
Figure 4RMS acceleration and change in pitch and roll angles during a fall with marked points at which events are detected with associated timestamps.
Figure 5Photograph of prototype device.
Falling movements and activities of daily living conducted in experiments.
| Falling Movements | Forward Fall | At First Kneeling Down, Ending up Lying Down. |
|---|---|---|
| Backward Fall | At First Impacting on Pelvis, Ending up Lying Down. | |
| Lateral Fall | Ending up Lying Down. | |
| Activities of daily living (ADLs) | Running | |
| Jumping | ||
Figure 6Deployment of test area and falling procedure in our falling experiment. (a) Trip fall. (b) Slip fall. (c) Lateral fall.
Figure 7RMS acceleration along with pitch and roll angles during fall experiment. (a) Forward fall (trip); (b) Backward fall (slip); (c) Lateral fall.
Figure 8RMS acceleration and pitch and roll angles during ADL experiment. (a) Jump; (b) Stand–run–stand.
Experimental results of falling tests and ADL tests.
| Forward Fall | Backward Fall | Lateral Fall | Run | Jump | |
|---|---|---|---|---|---|
| Subject 1 | 16/16 | 14/16 | 16/16 | 50/50 | 50/50 |
| Subject 2 | 16/16 | 16/16 | 16/16 | 50/50 | 48/50 |
| Subject 3 | 13/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Subject 4 | 16/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Subject 5 | 14/16 | 16/16 | 16/16 | 48/50 | 43/50 |
| Subject 6 | 8/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Subject 7 | 16/16 | 16/16 | 16/16 | 49/50 | 49/50 |
| Subject 8 | 16/16 | 16/16 | 16/16 | 47/50 | 48/50 |
| Subject 9 | 16/16 | 16/16 | 16/16 | 50/50 | 48/50 |
| Subject 10 | 10/16 | 16/16 | 15/16 | 50/50 | 50/50 |
| Subject 11 | 15/16 | 15/16 | 16/16 | 49/50 | 50/50 |
| Subject 12 | 16/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Subject 13 | 16/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Subject 14 | 16/16 | 16/16 | 16/16 | 49/50 | 46/50 |
| Subject 15 | 16/16 | 16/16 | 16/16 | 50/50 | 50/50 |
| Total | 220/240 | 237/240 | 239/240 | 742/750 | 732/750 |
Figure 9Metrics for evaluation of algorithm performance in falling tests and ADL tests (sensitivity, specificity, accuracy, precision, G index, and F1-score).
Comparison between proposed and previously developed fall detection systems.
| Ref. (Year) | Sensor Type | Sensor Location | Classifier | Sample Rate | Real-Time Detection | Performance |
|---|---|---|---|---|---|---|
| Accelerometer | Lower back | Wavelet analysis and threshold-based algorithm | 100 Hz | No | Sensitivity: 90% | |
| Accelerometer | Right anterior iliac spine | Threshold-based algorithm | 50 Hz | Yes | Sensitivity: 80% | |
| Accelerometer | Waist | Machine-learning-based algorithm | 200 Hz | Yes | Sensitivity: 99.44% | |
|
| Accelerometer | Head | Threshold-based algorithm | 20 Hz | Yes | Sensitivity: 96.67% |