Arm Motion Classification Using Time-Series Analysis of the Spectrogram Frequency Envelopes
Abstract
:1. Introduction
2. Materials and Methods
2.1. Radar MD Signature Representation
2.1.1. Time-Frequency Representations
2.1.2. Power Burst Curve (PBC)
2.2. Extraction of the Maximum Instantaneous Doppler Frequency Signature
2.3. Time-Series Analysis Methods
2.3.1. Dynamic Time Warping Method
- Boundary conditions: the beginning and end of the path are and , respectively;
- Monotonicity: given and where , we have ;
- Continuity: given and , we have .
2.3.2. Long Short-Term Memory
3. Results
3.1. Arm Motion Experiments
3.2. Classification Results
3.2.1. Classification Accuracy of the LSTM Method
3.2.2. Classification Accuracy of the DTW Method
4. Discussion
4.1. Analysis of the Classification Accuracy with Time Misalignment
4.2. Analysis of the Time Consumption
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
RF | Radio frequency |
MD | Micro-Doppler |
DTW | Dynamic time warping |
LSTM | Long short-term memory |
PCA | Prinicipal component analysis |
TFR | Time-frequency representation |
STFT | Short-time Fourier transform |
PBC | Power burst curve |
NN | Nearest neighbour |
NN-DTW | NN classifier with the DTW distance) |
STFT | Short-time Fourier transform |
PBC | Power burst curve |
CW | Continuous wave |
ML | Machine learning |
CNN | Convolutional neural network |
RNN | Recurrent neural network |
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a | b | c | d | e | f | |
---|---|---|---|---|---|---|
a | 95.77% | 0 | 0.59% | 1.73% | 1.49% | 0.42% |
b | 0 | 98.38% | 0.40% | 0 | 0 | 1.22% |
c | 0.89% | 2.02% | 93.22% | 1.37% | 2.02% | 0.48% |
d | 2.02% | 0.06% | 0.84% | 96.97% | 0.11% | 0 |
e | 1.31% | 0 | 1.94% | 0.44% | 96.12% | 0.19% |
f | 0.25% | 0.63% | 0.13% | 0 | 0 | 98.99% |
a | b | c | d | e | f | |
---|---|---|---|---|---|---|
a | 98.92% | 0 | 0.02% | 0.01% | 1.04% | 0.01% |
b | 0.03% | 95.28% | 2.62% | 0.03% | 0.45% | 1.59% |
c | 1.12% | 0.24% | 95.74% | 0.14% | 2.28% | 0.48% |
d | 2.82% | 0 | 0.59% | 95.78% | 0.81% | 0 |
e | 2.58% | 0 | 0.82% | 0 | 96.60% | 0 |
f | 0.60% | 0.01% | 0.05% | 0 | 0.56% | 98.78% |
a | b | c | d | e | f | |
---|---|---|---|---|---|---|
a | 96.96% | 0 | 0.02% | 0 | 2.79% | 0.23% |
b | 0.03% | 98.70% | 0.71% | 0.07% | 0 | 0.45% |
c | 0.28% | 0.38% | 97.87% | 0 | 1.39% | 0.08% |
d | 1.02% | 0 | 1.42% | 96.82% | 0.59% | 0.15% |
e | 0.17% | 0 | 0.48% | 0 | 99.09% | 0.26% |
f | 0.13% | 0 | 0.04% | 0 | 0.69% | 98.14% |
a | b | c | d | e | f | |
---|---|---|---|---|---|---|
a | 98.50% | 0 | 0.01% | 0 | 1.45% | 0.04% |
b | 0.11% | 98.80% | 0.55% | 0.01% | 0 | 0.53% |
c | 0.26% | 0.29% | 99.10% | 0 | 0.31% | 0.04% |
d | 0.66% | 0 | 0.15% | 99.15% | 0.03% | 0 |
e | 0.01% | 0 | 1.01% | 0 | 98.97% | 0.01% |
f | 0.02% | 0 | 0.01% | 0 | 0.32% | 99.65% |
Methods | Execution Time for Training | Execution Time for Test |
---|---|---|
LSTM | 2003.18 s | 1.68 s |
NN-DTW | 0 s | 114.11 s |
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Zeng, Z.; Amin, M.G.; Shan, T. Arm Motion Classification Using Time-Series Analysis of the Spectrogram Frequency Envelopes. Remote Sens. 2020, 12, 454. https://doi.org/10.3390/rs12030454
Zeng Z, Amin MG, Shan T. Arm Motion Classification Using Time-Series Analysis of the Spectrogram Frequency Envelopes. Remote Sensing. 2020; 12(3):454. https://doi.org/10.3390/rs12030454
Chicago/Turabian StyleZeng, Zhengxin, Moeness G. Amin, and Tao Shan. 2020. "Arm Motion Classification Using Time-Series Analysis of the Spectrogram Frequency Envelopes" Remote Sensing 12, no. 3: 454. https://doi.org/10.3390/rs12030454
APA StyleZeng, Z., Amin, M. G., & Shan, T. (2020). Arm Motion Classification Using Time-Series Analysis of the Spectrogram Frequency Envelopes. Remote Sensing, 12(3), 454. https://doi.org/10.3390/rs12030454