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arxiv 2103.01677 v1 pith:ZB7I6WLP submitted 2021-03-02 eess.SP

SimHumalator: An Open Source WiFi Based Passive Radar Human Simulator For Activity Recognition

classification eess.SP
keywords humanwificlassificationmotionradaranimationcapturedata
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This work presents a simulation framework to generate human micro-Dopplers in WiFi based passive radar scenarios, wherein we simulate IEEE 802.11g complaint WiFi transmissions using MATLAB's WLAN toolbox and human animation models derived from a marker-based motion capture system. We integrate WiFi transmission signals with the human animation data to generate the micro-Doppler features that incorporate the diversity of human motion characteristics, and the sensor parameters. In this paper, we consider five human activities. We uniformly benchmark the classification performance of multiple machine learning and deep learning models against a common dataset. Further, we validate the classification performance using the real radar data captured simultaneously with the motion capture system. We present experimental results using simulations and measurements demonstrating good classification accuracy of $\geq$ 95\% and $\approx$ 90\%, respectively.

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