Fusion of Multiple Pyroelectric Characteristics for Human Body Identification
Abstract
:1. Introduction
- Reductions both in the number of measurements and in sampling frequency for human motion state estimation.
- Reductions in hardware cost, power consumption, privacy, infringement, computational complexity, communication overhead, and networking data throughput.
- Reductions in system deployment duration, limitations upon applications or application location restrictions (e.g., long range or crowded scene).
- Its performance is independent of illumination and has strong robustness to the color change of background.
- Its sensitivity range of angular rate is about 0.1 r/s to 3 r/s [5,6], which can cover the most human walking speeds at around 2–10 m. It can obtain better field of view (FOV) combined with low price Fresnel lens array. Thus, compared with the traditional video systems, distributed wireless pyroelectric sensor networks can provide better spatial coverage and reduce the deployment duration and deployment location restrictions.
- Different Fresnel lens and signal modulation mask can obtain more pyroelectric infrared information of the human target.
- The four sensors are installed with different heights, which can collect different pyroelectric infrared information from corresponding parts of the human body.
- The effective data is fused by multiple channel signals which are collected from the four sensor modules.
- Extracting different pyroelectric infrared features of the human target by different algorithms can help establish different target identification model databases.
2. Related Work
3. Sensor Modules and Deployment
3.1. PIR Sensor Module
Parameters | Value |
---|---|
IR Receiving Electrode | 0.7 × 2.4 mm, 4 elements |
Sensitivity | ≥4300 V/W |
Detectivity (D*) | 1.6 × 108 cm (Hz)1/2/W |
Supply Voltage | 3–15 V |
Operating Temp | −30–70 °C |
Offset Voltage | 0.3–1.2 V |
FOV | 150° |
3.2. PIR Sensor Node
3.3. Gateway Module
4. Target Recognition System
4.1. System Architecture
4.2. Experimental Program
Object | Sexuality | Height | Step distance |
---|---|---|---|
a | male | 175 cm | 50 cm |
b | male | 167 cm | 40 cm |
c | female | 160 cm | 40 cm |
d | male | 182 cm | 60 cm |
e | male | 172 cm | 50 cm |
f | female | 158 cm | 37 cm |
g | female | 162 cm | 40 cm |
h | male | 179 cm | 56 cm |
i | male | 173 cm | 50 cm |
j | female | 171 cm | 52 cm |
5. Algorithm Descriptions
5.1. Feature Extraction
5.1.1. FFT + PCA (Fast Fourier Transform and Principal Component Analysis)
- Standardize the observation matrix X to obtain matrix Y;
- Calculate Z which is the covariance of matrix Y;
5.1.2. STFT (Short-Time Fourier Transform)
5.1.3. WT (Wavelet Transform)
5.1.4. WPT (Wavelet Packet Transform)
5.2. Feature Fusion and Recognition
5.2.1. FCEM (Fuzzy Comprehensive Evaluation Method)
5.2.2. SVM (Support Vector Machine)
6. Experiments and Results Analysis
6.1. Feature Extraction
6.2. Comparison of Different Algorithms’ Recognition Rates
Algorithm | Recognition rate in different path (%) | Computing time(s) | |||||
---|---|---|---|---|---|---|---|
Path1 | Path2 | Path3 | Path4 | Path5 | Path6 | ||
FFT + PCA + SVM + FCE | 83.5 | 89.6 | 76.3 | 86.0 | 77.7 | 65.0 | 10.1 |
STFT + SVM + FCE | 87.6 | 95.5 | 80.5 | 93.5 | 68.0 | 54.5 | 262.8 |
WT + SVM + FCE | 98.7 | 100 | 87.5 | 99.1 | 99.1 | 88.3 | 56.2 |
WPT + SVM + FCE | 95.4 | 97.5 | 90.4 | 97.9 | 95.4 | 90.8 | 25.0 |
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Zhou, W.; Xiong, J.; Li, F.; Jiang, N.; Zhao, N. Fusion of Multiple Pyroelectric Characteristics for Human Body Identification. Algorithms 2014, 7, 685-702. https://doi.org/10.3390/a7040685
Zhou W, Xiong J, Li F, Jiang N, Zhao N. Fusion of Multiple Pyroelectric Characteristics for Human Body Identification. Algorithms. 2014; 7(4):685-702. https://doi.org/10.3390/a7040685
Chicago/Turabian StyleZhou, Wanchun, Ji Xiong, Fangmin Li, Na Jiang, and Ning Zhao. 2014. "Fusion of Multiple Pyroelectric Characteristics for Human Body Identification" Algorithms 7, no. 4: 685-702. https://doi.org/10.3390/a7040685
APA StyleZhou, W., Xiong, J., Li, F., Jiang, N., & Zhao, N. (2014). Fusion of Multiple Pyroelectric Characteristics for Human Body Identification. Algorithms, 7(4), 685-702. https://doi.org/10.3390/a7040685