Location Adaptive Motion Recognition Based on Wi-Fi Feature Enhancement

Author:

Shi Wei,Duan Meichen,He Hui,Lin Liangliang,Yang Chen,Li Chenhao,Zhao Jizhong

Abstract

Action recognition is essential in security monitoring, home care, and behavior analysis. Traditional solutions usually leverage particular devices, such as smart watches, infrared/visible cameras, etc. These methods may narrow the application areas due to the risk of privacy leakage, high equipment cost, and over/under-exposure. Using wireless signals for motion recognition can effectively avoid the above problems. However, the motion recognition technology based on Wi-Fi signals currently has some defects, such as low resolution caused by narrow signal bandwidth, poor environmental adaptability caused by the multi-path effect, etc., which make it hard for commercial applications. To solve the above problems, we first propose and implement a position adaptive motion recognition method based on Wi-Fi feature enhancement, which is composed of an enhanced Wi-Fi features module and an enhanced convolution Transformer network. Meanwhile, we improve the generalization ability in the signal processing stage to avoid building an extremely complex model and reduce the demand for system hardware. To verify the generalization of the method, we implement real-world experiments using 9300 network cards and the PicoScenes software platform for data acquisition and processing. By contrast with the baseline method using original channel state information(CSI) data, the average accuracy of our algorithm is improved by 14% in different positions and over 16% in different orientations. Meanwhile, our method has best performance with an accuracy of 90.33% compared with the existing models on public datasets WiAR and WiDAR.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference44 articles.

1. Research on Action Recognition Method of Dance Video Image Based on Human-Computer Interaction;Peng;Sci. Program.,2021

2. Lou, M., Li, J., Wang, G., and He, G. (2019, January 26–29). AR-C3D: Action recognition accelerator for human-computer interaction on FPGA. Proceedings of the 2019 IEEE International Symposium on Circuits and Systems (ISCAS), Sapporo, Japan.

3. Chiu, W.Y., and Tsai, D.M. (2012, January 24–26). ICA-based Action Recognition for Human-computer Interaction in Disturbed Backgrounds. Proceedings of the GRAPP/IVAPP, Rome, Italy.

4. Zhu, Y., Lan, T., Yang, Y., Robinovitch, S., and Mori, G. (2013, January 20–23). Latent Spatio-temporal Models for Action Localization and Recognition in Nursing Home Surveillance Video. Proceedings of the MVA, Kyoto, Japan.

5. Sun, H., and Chen, Y. (2022, January 2–4). Real-Time Elderly Monitoring for Senior Safety by Lightweight Human Action Recognition. Proceedings of the 2022 IEEE 16th International Symposium on Medical Information and Communication Technology (ISMICT), Lincoln, NE, USA.

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