4.6 Article

Wi-GC: A Deep Spatiotemporal Gesture Recognition Method Based on Wi-Fi Signal

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/app122010425

关键词

Wi-Fi; gesture recognition; channel state information; attention mechanism; RAGRU

资金

  1. National Natural Science Foundation of China [62162056, 62262061]
  2. Industrial Support Foundations of Gansu [2021CYZC-06]
  3. 2020 Lanzhou City Talent Innovation and Entrepreneurship Project [2020-RC-116]
  4. Gansu Provincial Department of Education: Industry Support Program Project [2022CYZC-12]

向作者/读者索取更多资源

This research proposes a deep spatiotemporal gesture recognition method based on Wi-Fi signals. By selecting gesture-sensitive antennas, denoising and segmenting gesture data, and extracting temporal and spatial features, high recognition accuracy is achieved.
Wireless sensing has been increasingly used in smart homes, human-computer interaction and other fields due to its comprehensive coverage, non-contact and absence of privacy leakage. However, most existing methods are based on the amplitude or phase of the Wi-Fi signal to recognize gestures, which provides insufficient recognition accuracy. To solve this problem, we have designed a deep spatiotemporal gesture recognition method based on Wi-Fi signals, namely Wi-GC. The gesture-sensitive antennas are selected first and the fixed antennas are denoised and smoothed using a combined filter. The consecutive gestures are then segmented using a time series difference algorithm. The segmented gesture data is fed into our proposed RAGRU model, where BAGRU extracts temporal features of Channel State Information (CSI) sequences and RNet18 extracts spatial features of CSI amplitudes. In addition, to pick out essential gesture features, we introduce an attention mechanism. Finally, the extracted spatial and temporal characteristics are fused and input into softmax for classification. We have extensively and thoroughly verified the Wi-GC method in a natural environment and the average gesture recognition rate of the Wi-GC way is between 92-95.6%, which has strong robustness.

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