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Rethinking Vision-Language Model in Face Forensics: Multi-Modal Interpretable Forged Face Detector

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Deepfake detection is a long-established research topic vital for mitigating the spread of malicious misinformation. Unlike prior methods that provide either binary classification results or textual explanations separately, we introduce a novel method capable of generating both simultaneously. Our method harnesses the multi-modal learning capability of the pre-trained CLIP and the unprecedented interpretability of large language models (LLMs) to enhance both the generalization and explainability of deepfake detection. Specifically, we introduce a multi-modal face forgery detector (M2F2-Det) that employs tailored face forgery prompt learning, incorporating the pre-trained CLIP to improve generalization to unseen forgeries. Also, M2F2-Det incorporates an LLM to provide detailed textual explanations of its detection decisions, enhancing interpretability by bridging the gap between natural language and subtle cues of facial forgeries. Empirically, we evaluate M2F2-Det on both detection and explanation generation tasks, where it achieves state-of-the-art performance, demonstrating its effectiveness in identifying and explaining diverse forgeries.

Xiao Guo, Xiufeng Song, Yue Zhang, Xiaohong Liu, Xiaoming Liu• 2025

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC87.8
150
Deepfake DetectionDFDC (test)
AUC99.16
122
Deepfake DetectionDFD
AUC0.977
91
Deepfake DetectionDFD (test)
Accuracy96.51
81
Fake Face DetectionCeleb-DF v2 (test)
AUC99.02
50
Deepfake DetectionCeleb-DF
ROC-AUC0.951
44
Deepfake DetectionFF++ (test)
AUC99.25
44
Deepfake DetectionCeleb-DF (test)
Accuracy99.61
40
Video-level Deepfake DetectionDFDC
AUC0.878
34
Face Forgery DetectionCeleb-DF v2
Video-level AUC95.1
33
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