Smart Wearables with Sensor Fusion for Fall Detection in Firefighting
Abstract
:1. Introduction
- Performance evaluation of firefighter fall detection based on motion sensors that are placed in different parts of the body (PPC), including chest, elbows, wrists, thighs, and ankles.
- Aim to build a high realistic falling related movements dataset through collaboration with real firefighters.
- Proposes a novel fall-detection model which is trained with deep learning approach that can classify actual falls and fall-like events.
2. Related Works
- (1)
- Building a dataset by collecting motion data of actual firefighters, including falls and fall-like activities, for academic research purposes,
- (2)
- Investigating the optimization of motion sensors in fall-activity classification, in terms of their quantity and placement on firefighter protective clothing, and
- (3)
- Presenting a fall-detection framework applied for firefighters, especially when they are often working in high-stress situations.
3. Materials and Methods
3.1. Smart PPC Prototype
3.2. Dataset Collection
3.3. Framework
3.3.1. Global Calibration of IMUs
3.3.2. Data Pre-Processing
3.3.3. Recurrent Neural Network Classifier
4. Results
- AUC: Area under the receiver operating characteristic (ROC) curve.
- Specificity (Sp): the ability to predict negative samples.
- Sensitivity (Se): also called recall; the ratio means the accuracy among all predictions of falling.
- Accuracy (Ac): the accuracy among all predictions, both positive and negative.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Components | Specification |
---|---|
IMU | Triaxial accelerometer |
Triaxial gyroscope | |
Triaxial magnetometer | |
Operating voltage: 3 V to 5 V | |
Seeeduino XIAO MCU | Operating voltage: 3.3 V/5 V |
CPU: 40 MHz ARM Cortex-M0+ | |
Flash memory: 256 KB | |
RAM: 32 KB | |
Size: 20 × 17.5 × 3.5 mm | |
I2C: 1 pair | |
TCA29548A multiplexer | Operating voltage: 3V to 5V |
I2C: 8 pairs | |
JDY-18 BLE | Operating voltage: 1.8 V to 3.6 V |
BLE version: 4.2 | |
Frequency: 2.4 GHz | |
Size: 27 × 12.8 × 1.6 mm | |
Lithium-lon battery | Power supply: 3.7 V |
Capacity: 400 mAh |
Code | Type | Activity | Trials for Each Subject | Total Trials |
---|---|---|---|---|
F1 | Falls | forward falls using knees | 5 | 70 |
F2 | forward falls using hands | 5 | 70 | |
F3 | inclined falls left | 4 | 56 | |
F4 | inclined falls right | 4 | 56 | |
F5 | slow forward falls with crouch first | 3 | 42 | |
F6 | backward falls | 3 | 42 | |
FL1 | Fall-like | crouch | 4 | 56 |
FL2 | walk with stoop | 4 | 56 | |
FL3 | sit | 3 | 42 |
Placement | Chest | Elbows | Wrists | Thighs | Ankles |
---|---|---|---|---|---|
Code | C | E | W | T | A |
IMU Quantity | Combination | AUC | Se | Sp | Ac |
---|---|---|---|---|---|
9 | CEWTA | 0.97 | 92.25% | 94.59% | 94.10% |
7 | CEWT | 0.98 | 91.22% | 94.72% | 93.98% |
7 | CEWA | 0.95 | 89.04% | 94.25% | 93.15% |
7 | CETA | 0.95 | 88.01% | 95.37% | 93.82% |
7 | CWTA | 0.95 | 90.35% | 94.21% | 93.38% |
8 | EWTA | 0.94 | 90.72% | 90.21% | 90.32% |
5 | CEW | 0.94 | 88.72% | 91.94% | 91.26% |
5 | CEA | 0.95 | 88.39% | 92.24% | 91.43% |
5 | CWT | 0.98 | 88.39% | 92.24% | 91.43% |
6 | EWA | 0.93 | 85.06% | 92.42% | 90.87% |
6 | EWT | 0.96 | 89.14% | 91.42% | 90.94% |
5 | CWA | 0.96 | 90.84% | 93.02% | 92.56% |
5 | CET | 0.97 | 91.61% | 94.06% | 93.55% |
5 | ETA | 0.96 | 90.54% | 92.30% | 91.93% |
5 | WTA | 0.93 | 90.54% | 92.30% | 91.93% |
3 | CE | 0.96 | 92.88% | 89.92% | 90.54% |
3 | CW | 0.95 | 90.96% | 93.49% | 92.96% |
3 | CT | 0.95 | 86.94% | 92.97% | 91.70% |
3 | CA | 0.94 | 90.23% | 93.97% | 93.18% |
4 | TA | 0.92 | 83.92% | 90.61% | 89.20% |
4 | ET | 0.91 | 85.34% | 92.19% | 90.75% |
4 | EA | 0.95 | 87.40% | 93.49% | 92.21% |
4 | WT | 0.91 | 85.99% | 84.76% | 85.02% |
4 | WA | 0.90 | 81.98% | 90.72% | 88.88% |
4 | EW | 0.94 | 83.01% | 90.75% | 89.14% |
2 | E | 0.91 | 85.08% | 88.70% | 87.94% |
2 | W | 0.84 | 71.99% | 80.65% | 78.83% |
2 | T | 0.88 | 78.56% | 86.56% | 84.87% |
2 | A | 0.89 | 73.97% | 92.44% | 88.55% |
1 | C | 0.96 | 92.82% | 92.43% | 92.51% |
Activity | CEWTA | CEWT | CET | ||||||
Se | Sp | Ac | Se | Sp | Ac | Se | Sp | Ac | |
F1 | 91.45% | 96.87% | 95.42% | 87.28% | 98.40% | 95.42% | 89.11% | 98.25% | 95.80% |
F2 | 94.48% | 98.34% | 97.15% | 93.54% | 98.26% | 96.81% | 95.22% | 98.38% | 97.41% |
F3 | 96.55% | 97.20% | 97.00% | 95.69% | 97.58% | 97.07% | 97.09% | 97.10% | 97.10% |
F4 | 95.02% | 98.72% | 97.62% | 94.91% | 99.02% | 97.79% | 95.37% | 98.72% | 97.72% |
F5 | 96.62% | 97.40% | 97.22% | 98.46% | 97.22% | 97.50% | 97.23% | 97.22% | 97.22% |
F6 | 78.38% | 99.05% | 92.80% | 80.70% | 99.27% | 93.66% | 76.71% | 99.11% | 92.33% |
FL1 | 0% | 90.31% | 90.31% | 0% | 90.06% | 90.06% | 0% | 89.38% | 89.38% |
FL2 | 0% | 89.92% | 89.92% | 0% | 84.17% | 84.17% | 0% | 82.21% | 82.21% |
FL3 | 0% | 87.79% | 87.79% | 0% | 89.87% | 89.87% | 0% | 87.60% | 87.60% |
Total | 92.25% | 94.59% | 94.10% | 91.22% | 94.72% | 93.98% | 91.61% | 94.06% | 93.55% |
Activity | CA | C | Average | ||||||
Se | Sp | Ac | Se | Sp | Ac | Se | Sp | Ac | |
F1 | 91.25% | 94.31% | 93.49% | 90.84% | 95.31% | 94.11% | 89.99% | 96.63% | 94.85% |
F2 | 81.84% | 95.89% | 91.58% | 97.66% | 95.81% | 96.38% | 92.55% | 97.34% | 95.87% |
F3 | 93.64% | 97.44% | 96.27% | 99.68% | 95.80% | 97.00% | 96.53% | 97.02% | 96.89% |
F4 | 94.61% | 98.08% | 94.07% | 84.14% | 96.61% | 92.90% | 92.81% | 98.23% | 96.02% |
F5 | 98.46% | 96.32% | 96.80% | 96.61% | 97.04% | 96.94% | 97.48% | 97.04% | 97.14% |
F6 | 78.38% | 97.60% | 91.79% | 88.55% | 97.88% | 95.06% | 80.54% | 98.58% | 93.13% |
FL1 | 0% | 83.72% | 83.72% | 0% | 99.61% | 99.61% | 0% | 90.62% | 90.62% |
FL2 | 0% | 86.88% | 86.88% | 0% | 80.88% | 80.88% | 0% | 84.81% | 84.81% |
FL3 | 0% | 89.99% | 89.99% | 0% | 93.05% | 93.05% | 0% | 89.66% | 89.66% |
Total | 90.23% | 93.97% | 93.18% | 92.82% | 92.43% | 92.51% | / | / | / |
Reference | Application | Methodology | Algorithm | SR | Se | Sp | Ac |
---|---|---|---|---|---|---|---|
Van et al. (2018) [27] | Firefighters | 1 3-DOF accelerometer and 1 barometer on the thigh pocket, and 1 CO sensor on the mask (they raised 4 algorithms in [27] and 1 algorithm in [28]) | Algorithm 1 | 100 Hz | 100% | 100% | 100% |
Algorithm 2 | 100% | 94.44% | 95.83% | ||||
Algorithm 3 | 100% | 90.74% | 93.05% | ||||
Algorithm 4 | 100% | 91.67% | 93.75% | ||||
Van et al. (2018) [28] | Algorithm 1 | 88.9% | 94.45% | 91.67% | |||
Shi et al.(2020) [42] | Elderly | 1 IMU on waist | / | 100 Hz | 95.54% | 96.38% | 95.96% |
AnkFall (2021) [43] | 1 IMU on ankle | / | 100 Hz | 76.8% | 92.8% | / | |
Kiprijanovska et al. (2020) [44] | Ordinary being | 2 IMUs in 2 smartwatches | / | 100 Hz | 90.6% | 86.2% | 88.9% |
Proposed method | Firefighters | 9 9-DOF IMUs on the chest, wrists, elbows, thighs and ankles | / | 15 Hz | 92.25% | 94.59% | 94.10% |
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Chai, X.; Wu, R.; Pike, M.; Jin, H.; Chung, W.-Y.; Lee, B.-G. Smart Wearables with Sensor Fusion for Fall Detection in Firefighting. Sensors 2021, 21, 6770. https://doi.org/10.3390/s21206770
Chai X, Wu R, Pike M, Jin H, Chung W-Y, Lee B-G. Smart Wearables with Sensor Fusion for Fall Detection in Firefighting. Sensors. 2021; 21(20):6770. https://doi.org/10.3390/s21206770
Chicago/Turabian StyleChai, Xiaoqing, Renjie Wu, Matthew Pike, Hangchao Jin, Wan-Young Chung, and Boon-Giin Lee. 2021. "Smart Wearables with Sensor Fusion for Fall Detection in Firefighting" Sensors 21, no. 20: 6770. https://doi.org/10.3390/s21206770