Recognizing and Counting Freehand Exercises Using Ubiquitous Cellular Signals †
Abstract
:1. Introduction
- This work proposes and verifies the feasibility of applying cellular signals for passive freehand exercise tracking, which sheds light on a new kind of wireless signals for motion sensing, especially at the advent of 5G.
- We propose an analytic model to quantify the impact on the received cellular signals when humans conduct freehand exercise nearby. The analytical model provides two insights for other motion tracking research with cellular signals.
- We propose a real-time freehand exercise repetition segmentation scheme and several low-frequency features for type recognition, which may be further applied in motion repetition counting and recognition with cellular signals.
- We implemented the prototype of MobiFit and evaluated it with extensive experiments, both indoors and outdoors. The results confirm that MobiFit achieves high accuracy in counting and type recognition for freehand exercises.
2. Related Work
3. Experimental Study
3.1. GSM Background
3.2. Setup
3.3. Experiments on Different Positions
3.4. Experiments on Different Exercises
4. Analytic Model
5. System Design
5.1. Segmentation
Algorithm 1: Segmentation |
5.2. Feature Extraction
6. Evaluation
6.1. Setting and Process
6.2. Results
6.2.1. Repetition Counting
6.2.2. Recognition Classification
6.3. Parameter Evaluation
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Volunteer | Gender | Height | Weight | BMI | Age | Session | Repetition |
---|---|---|---|---|---|---|---|
male | 184 | 72 | 21.3 | 24 | 249 | 2670 | |
male | 180 | 75 | 23.1 | 23 | 224 | 2307 | |
male | 177 | 70 | 22.3 | 22 | 216 | 2246 | |
male | 175 | 67 | 21.9 | 23 | 222 | 2375 | |
famale | 166 | 55 | 20.0 | 24 | 192 | 1971 | |
famale | 165 | 50 | 18.4 | 22 | 195 | 1988 | |
male | 170 | 65 | 22.5 | 26 | 222 | 2298 | |
male | 173 | 70 | 23.4 | 25 | 219 | 2276 | |
male | 176 | 78 | 25.2 | 23 | 230 | 2532 | |
male | 178 | 85 | 26.8 | 24 | 217 | 2297 |
Features Volunteer | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | Mean |
---|---|---|---|---|---|---|---|---|---|---|---|
Motion-Fi | 83.5% | 80.2% | 81.4% | 84.2% | 82.9% | 82.1% | 82.6% | 80.7% | 81.3% | 83.6% | 82.3% |
Wavelt | 92.4% | 91.3% | 87.3% | 91.7% | 91.4% | 90.7% | 91.4% | 90.6% | 91.5% | 91.8% | 91% |
Wavelt+FFT | 94.3% | 93.4% | 95.2% | 94.6% | 94.2% | 95.2% | 95.3% | 92.7% | 93.6% | 92.4% | 94.1% |
Method | Tree | Ensemble | KNN | SVM:Cubic | Linear | Quadratic | Gaussian |
---|---|---|---|---|---|---|---|
Accuracy | 80.6% | 89.7% | 82.4% | 94.1% | 88.6% | 91.4% | 90.2% |
Day | Day 1 | Day 2 | Day 3 | Day 4 | Day 5 | Day 6 | Day 7 | After 3 Months |
---|---|---|---|---|---|---|---|---|
MobiFit(%) | 96.5 | 95.9 | 95.2 | 94.7 | 93.6 | 93.4 | 92.7 | 81 |
Motion-Fi(%) | 93.4 | 90.3 | 87.2 | 85.4 | 80.6 | 82.4 | 80.2 | 43.5 |
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Teng, G.; Xu, Y.; Hong, F.; Qi, J.; Jiang, R.; Liu, C.; Guo, Z. Recognizing and Counting Freehand Exercises Using Ubiquitous Cellular Signals. Sensors 2021, 21, 4581. https://doi.org/10.3390/s21134581
Teng G, Xu Y, Hong F, Qi J, Jiang R, Liu C, Guo Z. Recognizing and Counting Freehand Exercises Using Ubiquitous Cellular Signals. Sensors. 2021; 21(13):4581. https://doi.org/10.3390/s21134581
Chicago/Turabian StyleTeng, Guanlong, Yue Xu, Feng Hong, Jianbo Qi, Ruobing Jiang, Chao Liu, and Zhongwen Guo. 2021. "Recognizing and Counting Freehand Exercises Using Ubiquitous Cellular Signals" Sensors 21, no. 13: 4581. https://doi.org/10.3390/s21134581