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引用次数: 5

摘要

针对视频监控中的数据安全问题,提出了一种隐私保护方案。我们首先对每个视频帧的前景进行分离,然后对分离出来的人体物体进行模糊处理。为了安全存储,每个模糊的前景对象通过视觉加密被加密为N个共享,并存储在不同的服务器中。每个共享都是完全保密的,不传递任何有关原始视频的有意义的信息,因此,闯入一个存储服务器不会导致任何妥协。出于法律要求,授权用户可以通过非盲去模糊算法以更好的质量恢复原始内容。此外,由于采用了基于前景的编码方案,大大减少了分布式存储带来的数据扩展。由于以下原因,未经授权的用户无法恢复原始内容:1)分布式视频流存储;2)未知模糊核;3)前景内容和蒙版不准确。对多个监控场景的性能评估表明,该方法可以有效地保护监控视频中的敏感隐私信息。
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Privacy preserving for human object in video surveillance via visual cryptography
This paper proposes a privacy preserving scheme for data security in the video surveillance. We firstly separate the foreground for each video frame, and obscure the separated human object by motion blur. For secure storage, each blurred foreground object is encrypted into N shares by visual cryptography, and stored into different servers. Each share is fully confidential and does not convey any meaningful information about the original video, so that breaking into one storage server do not induce any compromise. For legal requirement, the authorized users can recover the original content with better quality by non-blind deblurring algorithm. Moreover, thanks to our exploited foreground based encoding scheme, the data expansion introduced by distributed storage is greatly reduced. It is impossible for unauthorized users to recover the original content by the following reasons: 1) distributed video stream storage; 2) unknown blurring kernel; 3) inaccurate foreground content and mask. The performance evaluation on several surveillance scenarios demonstrates that our proposed method can effectively protect sensitive privacy information in surveillance videos.
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