AI RESEARCH

MSCT: Differential Cross-Modal Attention for Deepfake Detection

arXiv CS.CV

ArXi:2604.07741v1 Announce Type: new Audio-visual deepfake detection typically employs a complementary multi-modal model to check the forgery traces in the video. These methods primarily extract forgery traces through audio-visual alignment, which results from the inconsistency between audio and video modalities. However, the traditional multi-modal forgery detection method has the problem of insufficient feature extraction and modal alignment deviation. To address this, we propose a multi-scale cross-modal transformer encoder (MSCT) for deepfake detection.