Spying through Virtual Backgrounds of Video Calls

Jan Malte Hilgefort, Dan Arp, Konrad Rieck
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引用次数: 2

Abstract

Video calls have become an essential part of today's business life, especially due to the Corona pandemic. Several industry branches enable their employees to work from home and collaborate via video conferencing services. While remote work offers benefits for health safety and personal mobility, it also poses privacy risks. Visual content is directly transmitted from the private living environment of employees to third parties, potentially exposing sensitive information. To counter this threat, video conferencing services support replacing the visible environment of a video call with a virtual background. This replacement, however, is imperfect, leaking tiny regions of the real background in video frames. In this paper, we explore how these leaks in virtual backgrounds can be exploited to reconstruct regions of the real environment. To this end, we build on recent techniques of computer vision and derive an approach capable of extracting and aggregating leaked pixels in a video call. In an empirical study with the services Zoom, Webex, and Google Meet, we can demonstrate that the exposed fragments of the reconstructed background are sufficient to spot different objects. From 114 video calls with virtual backgrounds, 35% enable to correctly identify objects in the environment. We conclude that virtual backgrounds provide only limited protection, and alternative defenses are needed.
通过视频通话的虚拟背景进行监视
视频通话已成为当今商业生活的重要组成部分,特别是由于冠状病毒大流行。一些行业分支机构允许员工在家工作,并通过视频会议服务进行协作。尽管远程工作有利于健康安全和个人机动性,但它也带来了隐私风险。视觉内容直接从员工的私人生活环境传播到第三方,可能会暴露敏感信息。为了应对这种威胁,视频会议业务支持将视频通话的可见环境替换为虚拟背景。然而,这种替代方法并不完美,会在视频帧中泄露真实背景的微小区域。在本文中,我们探讨了如何利用虚拟背景中的这些泄漏来重建真实环境的区域。为此,我们以计算机视觉的最新技术为基础,推导出一种能够提取和聚合视频通话中泄漏像素的方法。在Zoom、Webex和Google Meet服务的实证研究中,我们可以证明,重构背景的暴露碎片足以识别不同的物体。在114个具有虚拟背景的视频通话中,35%能够正确识别环境中的物体。我们的结论是,虚拟背景只能提供有限的保护,需要替代防御。
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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