Diffusion Deepfake
Chaitali Bhattacharyya, Hanxiao Wang, Feng Zhang, Sungho Kim, Xiatian, Zhu

TL;DR
This paper introduces challenging diffusion-based deepfake datasets, evaluates detection methods' limitations, and proposes a novel training strategy to improve deepfake detection robustness and generalizability.
Contribution
The paper creates new, diverse diffusion deepfake datasets and develops a momentum difficulty boosting strategy to enhance detection models' adaptability.
Findings
Existing detectors struggle with diffusion deepfakes.
Increasing training data diversity improves detection generalization.
The proposed strategy outperforms previous methods significantly.
Abstract
Recent progress in generative AI, primarily through diffusion models, presents significant challenges for real-world deepfake detection. The increased realism in image details, diverse content, and widespread accessibility to the general public complicates the identification of these sophisticated deepfakes. Acknowledging the urgency to address the vulnerability of current deepfake detectors to this evolving threat, our paper introduces two extensive deepfake datasets generated by state-of-the-art diffusion models as other datasets are less diverse and low in quality. Our extensive experiments also showed that our dataset is more challenging compared to the other face deepfake datasets. Our strategic dataset creation not only challenge the deepfake detectors but also sets a new benchmark for more evaluation. Our comprehensive evaluation reveals the struggle of existing detection…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis
MethodsDiffusion
