保护实时视频聊天免受面部再现产生的虚假面部视频

Jiacheng Shang, Jie Wu
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引用次数: 4

摘要

随着各种设备上摄像头的迅速普及,视频聊天已成为在线会议等主要交流方式之一。然而,最近人脸再现技术的发展使攻击者能够生成虚假的人脸视频并使用他人的身份。为了保护视频聊天免受虚假面部视频的侵害,我们提出了一种新的防御系统,以显着提高面部再现辅助攻击的门槛。与现有的工作相比,我们的系统有三大优势。首先,我们的系统不需要额外的硬件或密集的计算资源。其次,它遵循正常的视频聊天过程,不会显著降低用户体验。第三,我们的系统不需要收集攻击者和新用户的训练数据,这意味着它可以快速地在新设备上启动。我们开发了一个原型,并进行了全面的评估。实验结果表明,该系统对合法用户的平均真实接受率至少为92.5%,对攻击者的平均拒绝准确率至少为94.4%。
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Protecting Real-time Video Chat against Fake Facial Videos Generated by Face Reenactment
With the rapid popularity of cameras on various devices, video chat has become one of the major ways for communication, such as online meetings. However, the recent progress of face reenactment techniques enables attackers to generate fake facial videos and use others’ identities. To protect video chats against fake facial videos, we propose a new defense system to significantly raise the bar for face reenactment-assisted attacks. Compared with existing works, our system has three major strengths. First, our system does not require extra hardware or intense computational resources. Second, it follows the normal video chat process and does not significantly degrade the user experience. Third, our system does not need to collect training data from attackers and new users, which means it can be quickly launched on new devices. We developed a prototype and conducted comprehensive evaluations. Experimental results show that our system can provide an average true acceptance rate of at least 92.5% for legitimate users and reject the attacker with mean accuracy of at least 94.4% for a single detection.
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