安全保护实时3D视频监控

Zhongze Tang, Huy Phan, Xianglong Feng, Bo Yuan, Yao Liu, Sheng Wei
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引用次数: 0

摘要

随着3D深度摄像机在消费市场的普及,3D视频监控已成为安防监控的新趋势。在实现更有效的监控功能的同时,捕获的细粒度3D视频将引发新的安全问题,而这些问题尚未得到现有研究的解决。本文探讨了实时3D监控视频在触发生物识别相关攻击(如面部ID欺骗)方面的安全含义。我们证明了最先进的人脸认证系统可以被监控视频中呈现的3D人脸模型有效地破坏。然后,为了防御这种面部欺骗攻击,我们建议在潜在对手暴露之前,主动和善意地实时向监控视频注入对抗性扰动。这种动态生成的扰动可以防止人脸模型被利用来绕过基于深度学习的人脸认证,同时保持3D视频监控所需的质量和功能。我们在RGB-D数据集和3D视频数据集上对所提出的摄动生成方法进行了评估,证明了其有效的安全保护、低质量退化和实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security-Preserving Live 3D Video Surveillance
3D video surveillance has become the new trend in security monitoring with the popularity of 3D depth cameras in the consumer market. While enabling more fruitful surveillance features, the finer-grained 3D videos being captured would raise new security concerns that have not been addressed by existing research. This paper explores the security implications of live 3D surveillance videos in triggering biometrics-related attacks, such as face ID spoofing. We demonstrate that the state-of-the-art face authentication systems can be effectively compromised by the 3D face models presented in the surveillance video. Then, to defend against such face spoofing attacks, we propose to proactively and benignly inject adversarial perturbations to the surveillance video in real time, prior to the exposure to potential adversaries. Such dynamically generated perturbations can prevent the face models from being exploited to bypass deep learning-based face authentications while maintaining the required quality and functionality of the 3D video surveillance. We evaluate the proposed perturbation generation approach on both an RGB-D dataset and a 3D video dataset, which justifies its effective security protection, low quality degradation, and real-time performance.
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