4.6 Article

CSI-IANet: An Inception Attention Network for Human-Human Interaction Recognition Based on CSI Signal

期刊

IEEE ACCESS
卷 9, 期 -, 页码 166624-166638

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3134794

关键词

Wireless fidelity; Feature extraction; Sensors; Hidden Markov models; Wireless communication; Robot sensing systems; Wireless sensor networks; Channel state information (CSI); convolution neural network (CNN); deep learning; inception module; spatial attention

资金

  1. Institute of Information and Communications Technology Planning and Evaluation [2021-0-00467]
  2. BK21 FOUR Program of the NRF - Ministry of Education [NRF5199991514504]
  3. Basic Science Research Programs under the National Research Foundation of Korea (NRF) by the Ministry of Science and ICT [2019R1C1C1006806, 2021R1A4A1030775]

向作者/读者索取更多资源

This paper proposes a human-human interaction (HHI) classifier, CSI-IANet, that utilizes a modified inception CNN with a spatial-attention mechanism. Experimental results show that the model achieved an average accuracy of 91.30%, which is 5% higher than the existing best method.
In recent years, Wi-Fi infrastructures have become ubiquitous, providing device-free passive-sensing features. Wi-Fi signals can be affected by their reflection, refraction, and absorption by moving objects in their path. The channel state information (CSI), a signal property indicator, of the Wi-Fi signal can be analyzed for human activity recognition (HAR). Deep learning-based HAR models can enhance performance and accuracy without sacrificing computational efficiency. However, to save computational power, an inception network, which uses a variety of techniques to boost speed and accuracy, can be adopted. In contrast, the concept of spatial attention can be applied to obtain refined features. In this paper, we propose a human-human interaction (HHI) classifier, CSI-IANet, which uses a modified inception CNN with a spatial-attention mechanism. The CSI-IANet consists of three steps: i) data processing, ii) feature extraction, and iii) recognition. The data processing layer first uses the second-order Butterworth low-pass filter to denoise the CSI signal and then segment it before feeding it to the model. The feature extraction layer uses a multilayer modified inception CNN with an attention mechanism that uses spatial attention in an intense structure to extract features from captured CSI signals. Finally, the refined features are exploited by the recognition section to determine HHIs correctly. To validate the performance of the proposed CSI-IANet, a publicly available HHIs CSI dataset with a total of 4800 trials of 12 interactions was used. The performance of the proposed model was compared to those of existing state-of-the-art methods. The experimental results show that CSI-IANet achieved an average accuracy of 91.30%, which is better than that of the existing best method by 5%.

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