Voice-Face Homogeneity Tells Deepfake
Harry Cheng, Yangyang Guo, Tianyi Wang, Qi Li, Xiaojun, Chang, Liqiang Nie

TL;DR
This paper introduces a voice-face matching approach for deepfake detection that leverages the homogeneity between voices and faces, improving robustness and generalizability across datasets.
Contribution
It proposes a novel voice-face matching method with a pre-training and fine-tuning paradigm to enhance deepfake detection performance and adaptability.
Findings
Significant performance improvements over state-of-the-art methods.
Effective with limited deepfake data during fine-tuning.
Robust across multiple deepfake datasets.
Abstract
Detecting forgery videos is highly desirable due to the abuse of deepfake. Existing detection approaches contribute to exploring the specific artifacts in deepfake videos and fit well on certain data. However, the growing technique on these artifacts keeps challenging the robustness of traditional deepfake detectors. As a result, the development of generalizability of these approaches has reached a blockage. To address this issue, given the empirical results that the identities behind voices and faces are often mismatched in deepfake videos, and the voices and faces have homogeneity to some extent, in this paper, we propose to perform the deepfake detection from an unexplored voice-face matching view. To this end, a voice-face matching method is devised to measure the matching degree of these two. Nevertheless, training on specific deepfake datasets makes the model overfit certain…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Digital Media Forensic Detection · Face recognition and analysis
