defense arXiv Dec 3, 2025 · Dec 2025
Alejandro Cobo, Roberto Valle, José Miguel Buenaposada et al. · Universidad Politécnica de Madrid · Universidad Rey Juan Carlos
Trains deepfake video detectors on synthetic kinematic inconsistencies that violate natural facial motion correlations for generalizable detection
Output Integrity Attack vision
Generalizing deepfake detection to unseen manipulations remains a key challenge. A recent approach to tackle this issue is to train a network with pristine face images that have been manipulated with hand-crafted artifacts to extract more generalizable clues. While effective for static images, extending this to the video domain is an open issue. Existing methods model temporal artifacts as frame-to-frame instabilities, overlooking a key vulnerability: the violation of natural motion dependencies between different facial regions. In this paper, we propose a synthetic video generation method that creates training data with subtle kinematic inconsistencies. We train an autoencoder to decompose facial landmark configurations into motion bases. By manipulating these bases, we selectively break the natural correlations in facial movements and introduce these artifacts into pristine videos via face morphing. A network trained on our data learns to spot these sophisticated biomechanical flaws, achieving state-of-the-art generalization results on several popular benchmarks.
cnn transformer Universidad Politécnica de Madrid · Universidad Rey Juan Carlos