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CSI-HC: A WiFi-Based Indoor Complex Human Motion Recognition Method

机译:CSI-HC:基于WiFi的室内复杂人体运动识别方法

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摘要

WiFi indoor personnel behavior recognition has become the core technology of wireless network perception. However, the existing human behavior recognition methods have great challenges in terms of detection accuracy, intrusion, and complexity of operations. In this paper, we firstly analyze and summarize the existing human motion recognition schemes, and due to the existence of the problems in them, we propose a noninvasive, highly robust complex human motion recognition scheme based on Channel State Information (CSI), that is, CSI-HC, and the traditional Chinese martial art XingYiQuan is verified as a complex motion background. CSI-HC is divided into two phases: offline and online. In the offline phase, the human motion data are collected on the commercial Atheros NIC and a powerful denoising method is constructed by using the Butterworth low-pass filter and wavelet function to filter the outliers in the motion data. Then, through Restricted Boltzmann Machine (RBM) training and classification, we establish offline fingerprint information. In the online phase, SoftMax regression is used to correct the RBM classification to process the motion data collected in real time and the processed real-time data are matched with the offline fingerprint information. On this basis, the recognition of a complex human motion is realized. Finally, through repeated experiments in three classical indoor scenes, the parameter setting and user diversity affecting the accuracy of motion recognition are analyzed and the robustness of CSI-HC is detected. In addition, the performance of the proposed method is compared with that of the existing motion recognition methods. The experimental results show that the average motion recognition rate of CSI-HC in three classic indoor scenes reaches 85.4%, in terms of motion complexity and indoor recognition accuracy. Compared with other algorithms, it has higher stability and robustness.
机译:WiFi室内人员行为识别已成为无线网络感知的核心技术。然而,现有的人类行为识别方法在检测准确性,侵扰和操作复杂性方面具有巨大挑战。在本文中,我们首先分析和总结现有的人体运动识别方案,并且由于它们存在的问题,我们提出了一种基于信道状态信息(CSI)的非侵入性,高度强大的复杂的人体运动识别方案,即,CSI-HC,传统的中国武术Xingyiquan被验证为复杂的运动背景。 CSI-HC分为两个阶段:离线和在线。在离线阶段,通过使用Butterworth低通滤波器和小波函数来构建人体运动数据,并通过使用Butterworth低通滤波器和小波函数来构建强大的去噪方法以在运动数据中过滤异常值。然后,通过受限制的Boltzmann机器(RBM)培训和分类,我们建立了离线指纹信息。在在线阶段,Softmax回归用于校正RBM分类以处理实时收集的运动数据,并且处理后的实时数据与离线指纹信息匹配。在此基础上,实现了复杂的人类运动的识别。最后,通过三个经典室内场景中的重复实验,分析了影响运动识别精度的参数设置和用户分集,检测到CSI-HC的稳健性。此外,将所提出的方法的性能与现有运动识别方法的性能进行比较。实验结果表明,在运动复杂性和室内识别准确性方面,三种经典室内场景中CSI-HC的平均运动识别率达到85.4%。与其他算法相比,它具有更高的稳定性和鲁棒性。

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