WiVi:基于wifi -视频跨模式融合的多路径步态识别系统

Jinmeng Fan, Hao Zhou, Fengyu Zhou, Xiaoyan Wang, Zhi Liu, Xiang Li
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引用次数: 2

摘要

基于wifi的步态识别是一种有吸引力的无设备用户识别方法,但路径敏感的通道状态信息(CSI)阻碍了其在多路径环境中的应用,从而加剧了采样和部署成本(即大量样本和多个特殊放置的设备)。另一方面,尽管基于视频的理想CSI生成有望大幅减少样本,但理想CSI中缺失的环境相关信息使其不适合具有多条步行路径的一般室内场景。本文提出了一种基于wifi -视频跨模态融合的多路径步态识别系统WiVi,该系统同时需要较少的样本和设备。当受试者在房间中自然行走时,我们使用基于wifi的人类定位结果的k -最近邻(KNN)分类器确定他/她是否在预定义的判断路径上行走。对于每个判断路径,我们通过基于视频的模拟生成理想CSI,以减少所需的样本数量,并采用两个分离的神经网络(nn)来实现理想CSI和测量CSI之间的环境感知比较。第一个网络由测量的CSI样本进行监督,并学习获得包含房间特定“口音”的半理想CSI特征,即通常由房间布局引起的长期环境影响。第二个网络在存在信道变化或噪声等短期环境影响的情况下,训练半理想特征与实测特征之间的相似性评价。我们实现了原型系统,并进行了大量的实验来评估性能。实验结果表明,WiVi的识别准确率在6人组85.4%到3人组98.0%之间。与单路径步态识别系统相比,我们的性能平均提高了113.8%。与其他多路径步态识别系统相比,我们获得了相似甚至更好的性能,所需样本减少了57.1-93.7%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WiVi: WiFi-Video Cross-Modal Fusion based Multi-Path Gait Recognition System
WiFi-based gait recognition is an attractive method for device-free user identification, but path-sensitive Channel State Information (CSI) hinders its application in multi-path environments, which exacerbates sampling and deployment costs (i.e., large number of samples and multiple specially placed devices). On the other hand, although video-based ideal CSI generation is promising for dramatically reducing samples, the missing environment-related information in the ideal CSI makes it unsuitable for general indoor scenarios with multiple walking paths.In this paper, we propose WiVi, a WiFi-video cross-modal fusion based multi-path gait recognition system which needs fewer samples and fewer devices simultaneously. When the subject walks naturally in the room, we determine whether he/she is walking on the predefined judgment paths with a K-Nearest Neighbors (KNN) classifier working on the WiFi-based human localization results. For each judgment path, we generate the ideal CSI through video-based simulation to decrease the number of needed samples, and adopt two separated neural networks (NNs) to fulfill environment-aware comparison among the ideal and measured CSIs. The first network is supervised by measured CSI samples, and learns to obtain the semi-ideal CSI features which contain the room-specific ‘accent’, i.e., the long-term environment influence normally caused by room layout. The second network is trained for similarity evaluation between the semi-ideal and measured features, with the existence of short-term environment influence such as channel variation or noises.We implement the prototype system and conduct extensive experiments to evaluate the performance. Experimental results show that WiVi’s recognition accuracy ranges from 85.4% for a 6-person group to 98.0% for a 3-person group. As compared with single-path gait recognition systems, we achieve average 113.8% performance improvement. As compared with the other multi-path gait recognition systems, we achieve similar or even better performance with needed samples being reduced by 57.1-93.7%
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