FRIDAY: Mitigating Unintentional Facial Identity in Deepfake Detectors Guided by Facial Recognizers
Previous Deepfake detection methods perform well within their training domains, but their effectiveness diminishes significantly with new synthesis techniques. Recent studies have revealed that detection models often create decision boundaries based on facial identity rather than synthetic artifacts...
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Zusammenfassung: | Previous Deepfake detection methods perform well within their training
domains, but their effectiveness diminishes significantly with new synthesis
techniques. Recent studies have revealed that detection models often create
decision boundaries based on facial identity rather than synthetic artifacts,
resulting in poor performance on cross-domain datasets. To address this
limitation, we propose Facial Recognition Identity Attenuation (FRIDAY), a
novel training method that mitigates facial identity influence using a face
recognizer. Specifically, we first train a face recognizer using the same
backbone as the Deepfake detector. The recognizer is then frozen and employed
during the detector's training to reduce facial identity information. This is
achieved by feeding input images into both the recognizer and the detector, and
minimizing the similarity of their feature embeddings through our Facial
Identity Attenuating loss. This process encourages the detector to generate
embeddings distinct from the recognizer, effectively reducing the impact of
facial identity. Extensive experiments demonstrate that our approach
significantly enhances detection performance on both in-domain and cross-domain
datasets. |
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DOI: | 10.48550/arxiv.2412.14623 |