A Quality-Centric Framework for Generic Deepfake Detection
Wentang Song, Zhiyuan Yan, Yuzhen Lin, Taiping Yao, Changsheng Chen, Shen Chen, Yandan Zhao, Shouhong Ding, Bin Li

TL;DR
This paper introduces a quality-centric training framework for deepfake detection that improves generalization by focusing on forgery quality assessment, curriculum learning, and frequency data augmentation.
Contribution
It proposes a novel framework combining forgery quality evaluation, data enhancement, and learning pacing to enhance deepfake detectors' robustness against unseen manipulations.
Findings
Significantly improves detection generalization performance.
Effective in handling high-quality, realistic deepfakes.
Plug-and-play with existing detection models.
Abstract
Detecting AI-generated images, particularly deepfakes, has become increasingly crucial, with the primary challenge being the generalization to previously unseen manipulation methods. This paper tackles this issue by leveraging the forgery quality of training data to improve the generalization performance of existing deepfake detectors. Generally, the forgery quality of different deepfakes varies: some have easily recognizable forgery clues, while others are highly realistic. Existing works often train detectors on a mix of deepfakes with varying forgery qualities, potentially leading detectors to short-cut the easy-to-spot artifacts from low-quality forgery samples, thereby hurting generalization performance. To tackle this issue, we propose a novel quality-centric framework for generic deepfake detection, which is composed of a Quality Evaluator, a low-quality data enhancement module,…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Digital Media Forensic Detection · Industrial Vision Systems and Defect Detection
