抖动假视频通过主动探测实时检测深度伪造视频

Zhixin Xie, Jun Luo
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引用次数: 0

摘要

实时深度伪造是一种生成式人工智能,能够在视频中 "创建 "不存在的内容(例如,将一个人的脸与另一个人的脸互换)。不幸的是,人工智能已被滥用于制作深度伪造视频(在网络会议、视频通话和身份验证过程中),用于金融诈骗和政治误导等恶意目的。深度伪造检测作为对付深度伪造的对策,已经引起了学术界的极大关注,但现有的研究通常依赖于学习被动特征,而这些特征在所见数据集之外的表现可能很差。在本文中,我们提出了一种新的实时深度防伪检测方法 SFake,它创新性地利用了深度防伪模型无法适应物理干扰的缺陷。具体来说,SFake 会主动发送探针来触发智能手机上的机械振动,从而在镜头上产生可控特征。因此,SFake 会根据面部区域与探针图案的一致性来判断人脸是否被深度防伪所替换。我们实现了 SFake,在自建的数据集上评估了其有效性,并将其与其他六种检测方法进行了比较。结果表明,SFake 以更高的检测精度、更快的处理速度和更低的内存消耗优于其他检测方法。
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Shaking the Fake: Detecting Deepfake Videos in Real Time via Active Probes
Real-time deepfake, a type of generative AI, is capable of "creating" non-existing contents (e.g., swapping one's face with another) in a video. It has been, very unfortunately, misused to produce deepfake videos (during web conferences, video calls, and identity authentication) for malicious purposes, including financial scams and political misinformation. Deepfake detection, as the countermeasure against deepfake, has attracted considerable attention from the academic community, yet existing works typically rely on learning passive features that may perform poorly beyond seen datasets. In this paper, we propose SFake, a new real-time deepfake detection method that innovatively exploits deepfake models' inability to adapt to physical interference. Specifically, SFake actively sends probes to trigger mechanical vibrations on the smartphone, resulting in the controllable feature on the footage. Consequently, SFake determines whether the face is swapped by deepfake based on the consistency of the facial area with the probe pattern. We implement SFake, evaluate its effectiveness on a self-built dataset, and compare it with six other detection methods. The results show that SFake outperforms other detection methods with higher detection accuracy, faster process speed, and lower memory consumption.
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