CVLGIVAug 11, 2020

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

arXiv:2008.04848v126 citations
AI Analysis

This addresses security concerns for media forensics by providing a more reliable and interpretable solution for detecting forged identities in videos.

The paper tackles the problem of detecting deep-faked videos by proposing an interpretable method based on anomalous co-motion patterns, achieving superior performance and robustness against data compression compared to state-of-the-art deep forensic methods.

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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