Gait recognition using wifi signals

Wen Wang, A. Liu, Muhammad Shahzad
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引用次数: 441

Abstract

In this paper, we propose WifiU, which uses commercial WiFi devices to capture fine-grained gait patterns to recognize humans. The intuition is that due to the differences in gaits of different people, the WiFi signal reflected by a walking human generates unique variations in the Channel State Information (CSI) on the WiFi receiver. To profile human movement using CSI, we use signal processing techniques to generate spectrograms from CSI measurements so that the resulting spectrograms are similar to those generated by specifically designed Doppler radars. To extract features from spectrograms that best characterize the walking pattern, we perform autocorrelation on the torso reflection to remove imperfection in spectrograms. We evaluated WifiU on a dataset with 2,800 gait instances collected from 50 human subjects walking in a room with an area of 50 square meters. Experimental results show that WifiU achieves top-1, top-2, and top-3 recognition accuracies of 79.28%, 89.52%, and 93.05%, respectively.
使用wifi信号进行步态识别
在本文中,我们提出了WifiU,它使用商用WiFi设备来捕获细粒度的步态模式来识别人类。直觉是,由于不同人的步态不同,行走的人反射的WiFi信号在WiFi接收器上的信道状态信息(CSI)会产生独特的变化。为了使用CSI分析人体运动,我们使用信号处理技术从CSI测量中生成频谱图,使所得频谱图与专门设计的多普勒雷达产生的频谱图相似。为了从光谱图中提取最能表征行走模式的特征,我们对躯干反射进行了自相关处理,以消除光谱图中的缺陷。我们在一个数据集上对wifi进行了评估,该数据集收集了50名人类受试者在一个面积为50平方米的房间里行走的2800个步态实例。实验结果表明,WifiU的top-1、top-2、top-3识别准确率分别为79.28%、89.52%、93.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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