AI RESEARCH
Beyond Surface Artifacts: Capturing Shared Latent Forgery Knowledge Across Modalities
arXiv CS.CV
•
ArXi:2604.07763v1 Announce Type: new As generative artificial intelligence evolves, deepfake attacks have escalated from single-modality manipulations to complex, multimodal threats. Existing forensic techniques face a severe generalization bottleneck: by relying excessively on superficial, modality-specific artifacts, they neglect the shared latent forgery knowledge hidden beneath variable physical appearances. Consequently, these models suffer catastrophic performance degradation when confronted with unseen "dark modalities." To break this limitation, this paper.