论文标题

通过创建时空规律性中断来检测深层

Detecting Deepfake by Creating Spatio-Temporal Regularity Disruption

论文作者

Guan, Jiazhi, Zhou, Hang, Gong, Mingming, Ding, Errui, Wang, Jingdong, Zhao, Youjian

论文摘要

尽管令人鼓舞的是深泡检测的进展,但由于训练过程中探索的伪造线索有限,对未见伪造类型的概括仍然是一个重大挑战。相比之下,我们注意到Deepfake中的一个常见现象:虚假的视频创建不可避免地破坏了原始视频中的统计规律性。受到这一观察的启发,我们建议通过区分实际视频中没有出现的“规律性中断”来增强深层检测的概括。具体而言,通过仔细检查空间和时间属性,我们建议通过伪捕获生成器破坏真实的视频,并创建各种用于培训的伪捕获视频。这种做法使我们能够在不使用虚假视频的情况下实现深泡沫检测,并以简单有效的方式提高概括能力。为了共同捕获空间和时间中断,我们提出了一个时空增强块,以了解我们自我创建的视频之间的规律性破坏。通过全面的实验,我们的方法在几个数据集上表现出色。

Despite encouraging progress in deepfake detection, generalization to unseen forgery types remains a significant challenge due to the limited forgery clues explored during training. In contrast, we notice a common phenomenon in deepfake: fake video creation inevitably disrupts the statistical regularity in original videos. Inspired by this observation, we propose to boost the generalization of deepfake detection by distinguishing the "regularity disruption" that does not appear in real videos. Specifically, by carefully examining the spatial and temporal properties, we propose to disrupt a real video through a Pseudo-fake Generator and create a wide range of pseudo-fake videos for training. Such practice allows us to achieve deepfake detection without using fake videos and improves the generalization ability in a simple and efficient manner. To jointly capture the spatial and temporal disruptions, we propose a Spatio-Temporal Enhancement block to learn the regularity disruption across space and time on our self-created videos. Through comprehensive experiments, our method exhibits excellent performance on several datasets.

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