保护隐私的选择性视频监控

Alem Fitwi, Yu Chen
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引用次数: 10

摘要

这种无处不在的侵入性监控行为已经引起了无数人的广泛关注,他们担心自己的隐私受到侵犯。现有大规模监控系统的隐私泄露主要是由于对手利用漏洞和监控人员滥用摄像头造成的。因此,公众对监控系统的隐私意识有着极其迫切的要求。在本文中,我们提出了一种保护隐私的选择性视频监控方法PriSev,它允许选择性监控,只有包含攻击性和可疑行为模式的视频帧,如挥舞枪支或/和举起拳头,可供监控操作中心的安全人员查看和存储。通过引入轻量级动态混沌图像加密(DyCIE)方案,所提出的PriSev方法可以在创建视频的网络边缘进行现场目标检测和帧加密。在雾/云层,帧解密被有效地执行,然后是基于深度神经网络(DNN)的帧过滤和在监视服务器上运行的选择性存储。此外,还介绍了一种用于发送和接收代理之间交换解密密钥的多代理系统。大量的实验研究和性能分析证实了所提出的PriSev方法能够有效地实时执行隐私保护选择性监视。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Selective Video Surveillance
The pervasive and intrusive surveillance practices have raised a widespread concern amongst zillions of people about the invasion of their privacy. The privacy breaches in the existing mass-surveillance system are mainly attributed to the exploits of vulnerabilities by adversaries and abuse of cameras by people in charge of them. As a result, there has been a tremendously pressing demand from the public to make the surveillance system privacy-conscious. In this paper, we propose PriSev, a privacy-preserving selective video surveillance method, which enables selective-surveillance where only video frames containing aggressive and suspicious behavioral patterns, like gun brandishing or/and fist-raising, are made available for view by security personnel in the surveillance operation center and for storage. By introducing a lightweight dynamic chaotic image enciphering (DyCIE) scheme, the proposed PriSev method enables onsite object detection and frame encryption at the network edge where the video is created. At the fog/cloud layer, frame decryption is efficiently performed followed by deep-neural-network (DNN) based frame-filtering and selective storage that runs on a surveillance server. In addition, a multiagent system is introduced for the exchange of deciphering keys between the sending and receiving agents. Extensive experimental study and performance analyses corroborate that the proposed PriSev method is able to efficiently perform a privacy-preserving selective surveillance in real-time.
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