Fake It till You Make It: Curricular Dynamic Forgery Augmentations towards General Deepfake Detection
Yuzhen Lin, Wentang Song, Bin Li, Yuezun Li, Jiangqun Ni, Han Chen and, Qiushi Li

TL;DR
This paper introduces CDFA, a novel deepfake detection method that employs curriculum-based forgery augmentation and dynamic policy search to enhance generalization across unseen datasets and manipulation techniques.
Contribution
The paper proposes a curriculum-based dynamic forgery augmentation framework with a new self-shifted blending augmentation for improved deepfake detection generalization.
Findings
Significantly improves cross-dataset detection performance.
Enhances robustness against unseen manipulation methods.
Outperforms existing methods on benchmark datasets.
Abstract
Previous studies in deepfake detection have shown promising results when testing face forgeries from the same dataset as the training. However, the problem remains challenging when one tries to generalize the detector to forgeries from unseen datasets and created by unseen methods. In this work, we present a novel general deepfake detection method, called \textbf{C}urricular \textbf{D}ynamic \textbf{F}orgery \textbf{A}ugmentation (CDFA), which jointly trains a deepfake detector with a forgery augmentation policy network. Unlike the previous works, we propose to progressively apply forgery augmentations following a monotonic curriculum during the training. We further propose a dynamic forgery searching strategy to select one suitable forgery augmentation operation for each image varying between training stages, producing a forgery augmentation policy optimized for better…
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Taxonomy
TopicsDigital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis · Adversarial Robustness in Machine Learning
