论文标题

通过异常的联合动作模式检测揭露深染色视频

Exposing Deep-faked Videos by Anomalous Co-motion Pattern Detection

论文作者

Wang, Gengxing, Zhou, Jiahuan, Wu, Ying

论文摘要

最近的基于深度学习的视频综合方法,特别是通过可以伪造“ Deepfake”等身份的应用,引起了极大的安全问题。因此,提出了相应的深层法医方法来解决此问题。但是,现有方法要么基于无法解释的深网,该网络极大地降低了媒体法医的主要解释性因子,要么依赖于脆弱的图像统计数据,例如噪声模式,在现实世界中,数据压缩可以很容易地恶化。在本文中,我们提出了一种完全介入的视频法医方法,该方法专门旨在揭露深染色视频。为了增强对具有各种内容的视频的普遍性,我们对视频中多个特定空间位置的时间运动进行了建模,以提取可靠和可靠的表示形式,称为联合动作模式。这种连接模式是在本地运动特征中开采的,这些特征与视频内容无关,以便在实例方面的变化也可以在很大程度上得到缓解。更重要的是,我们提出的联合动作模式既具有卓越的可解释性,又具有足够的鲁棒性,可针对深载视频的数据压缩。我们进行了广泛的实验,以凭经验证明我们方法在分类和异常检测评估设置下与最先进的深层法医方法的优势和有效性。

Recent deep learning based video synthesis approaches, in particular with applications that can forge identities such as "DeepFake", have raised great security concerns. Therefore, corresponding deep forensic methods are proposed to tackle this problem. However, existing methods are either based on unexplainable deep networks which greatly degrades the principal interpretability factor to media forensic, or rely on fragile image statistics such as noise pattern, which in real-world scenarios can be easily deteriorated by data compression. In this paper, we propose an fully-interpretable video forensic method that is designed specifically to expose deep-faked videos. To enhance generalizability on videos with various content, we model the temporal motion of multiple specific spatial locations in the videos to extract a robust and reliable representation, called Co-Motion Pattern. Such kind of conjoint pattern is mined across local motion features which is independent of the video contents so that the instance-wise variation can also be largely alleviated. More importantly, our proposed co-motion pattern possesses both superior interpretability and sufficient robustness against data compression for deep-faked videos. We conduct extensive experiments to empirically demonstrate the superiority and effectiveness of our approach under both classification and anomaly detection evaluation settings against the state-of-the-art deep forensic methods.

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