基于动态自适应窗口的WiFi信号实时活动识别系统

Shiming Chen, Chunjing Xiao, Yanhui Han, Xianghe Du
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引用次数: 0

摘要

基于WiFi香奈儿状态信息(CSI)的活动识别近年来备受关注。及时识别活动是非常重要的,特别是对于摔倒等危险活动。在本文中,我们提出了一个实时活动识别系统。在该系统中,我们设计了一种基于动态阈值的活动分割方法,解决了固定阈值和单一窗口的问题,能够准确地检测活动的起始点和结束点。实验表明,该系统取得了预期的识别性能。
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A Real-time Activity Recognition System based on Dynamic Adaptive Windows using WiFi Signals
WiFi Chanel State Information (CSI)-based activity recognition has attracted much attention in recent years. And it is extremely vital to recognize activities in time, especially for dangerous activities such as fall. In this paper, we present a real-time activity recognition system. In this system, we design a dynamic threshold-based activity segmentation method, which can address the problems of the fixed threshold and single window, and accurately detect start and end points of activities. The experiments demonstrate that our system acquires expected recognition performance.
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