RFCam: Uncertainty-aware Fusion of Camera and Wi-Fi for Real-time Human Identification with Mobile Devices

Hongkai Chen, Sirajum Munir, Shane Lin
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引用次数: 6

Abstract

As cameras and Wi-Fi access points are widely deployed in public places, new mobile applications and services can be developed by connecting live video analytics to the mobile Wi-Fi-enabled devices of the relevant users. To achieve this, a critical challenge is to identify the person who carries a device in the video with the mobile device’s network ID, e.g., MAC address. To address this issue, we propose RFCam, a system for human identification with a fusion of Wi-Fi and camera data . RFCam uses a multi-antenna Wi-Fi radio to collect CSI of Wi-Fi packets sent by mobile devices, and a camera to monitor users in the area. With low sampling rate CSI data, RFCam derives heterogeneous embedding features on location, motion, and user activity for each device over time, and fuses them with visual user features generated from video analytics to find the best matches. To mitigate the impacts of multi-user environments on wireless sensing, we develop video-assisted learning models for different features and quantify their uncertainties, and incorporate them with video analytics to rank moments and features for robust and efficient fusion. RFCam is implemented and tested in indoor environments for over 800minutes with 25 volunteers, and extensive evaluation results demonstrate that RFCam achieves real-time identification average accuracy of 97 . 01% in all experiments with up to ten users, significantly outperforming existing solutions. and how to estimate different features in device profiles with uncertainties quantification. Then, we describe the visual sensing of user profiles with an uncertainty-aware video analytics approach to identify contextually important moments.
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RFCam:相机与Wi-Fi的不确定性感知融合,用于移动设备的实时人体识别
随着摄像头和Wi-Fi接入点在公共场所的广泛部署,通过将实时视频分析连接到相关用户的支持Wi-Fi的移动设备,可以开发新的移动应用程序和服务。为了实现这一点,一个关键的挑战是识别视频中携带移动设备的人的移动设备的网络ID,例如MAC地址。为了解决这个问题,我们提出了RFCam,一个融合Wi-Fi和摄像头数据的人体识别系统。RFCam使用一个多天线Wi-Fi无线电来收集移动设备发送的Wi-Fi数据包的CSI,并使用一个摄像头来监控该地区的用户。通过低采样率的CSI数据,RFCam可以从每台设备的位置、运动和用户活动中提取异构嵌入特征,并将它们与视频分析生成的视觉用户特征融合在一起,以找到最佳匹配。为了减轻多用户环境对无线传感的影响,我们针对不同的特征开发了视频辅助学习模型,量化了它们的不确定性,并将它们与视频分析结合起来,对矩和特征进行排序,以实现鲁棒和高效的融合。RFCam在25名志愿者的室内环境下进行了超过800分钟的测试,广泛的评估结果表明,RFCam的实时识别平均准确率为97。在最多10个用户的所有实验中占比为1%,显著优于现有解决方案。以及如何用不确定度量化来估计器件轮廓的不同特征。然后,我们用不确定性感知视频分析方法描述用户配置文件的视觉感知,以识别上下文重要时刻。
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