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VRAG-DFD: Verifiable Retrieval-Augmentation for MLLM-based Deepfake Detection

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In Deepfake Detection (DFD) tasks, researchers proposed two types of MLLM-based methods: complementary combination with small DFD detectors, or static forgery knowledge injection.The lack of professional forgery knowledge hinders the performance of these DFD-MLLMs.To solve this, we deeply considered two insightful issues: How to provide high-quality associated forgery knowledge for MLLMs? AND How to endow MLLMs with critical reasoning abilities given noisy reference information? Notably, we attempted to address above two questions with preliminary answers by leveraging the combination of Retrieval-Augmented Generation (RAG) and Reinforcement Learning (RL).Through RAG and RL techniques, we propose the VRAG-DFD framework with accurate dynamic forgery knowledge retrieval and powerful critical reasoning capabilities.Specifically, in terms of data, we constructed two datasets with RAG: Forensic Knowledge Database (FKD) for DFD knowledge annotation, and Forensic Chain-of-Thought Dataset (F-CoT), for critical CoT construction.In terms of model training, we adopt a three-stage training method (Alignment->SFT->GRPO) to gradually cultivate the critical reasoning ability of the MLLM.In terms of performance, VRAG-DFD achieved SOTA and competitive performance on DFD generalization testing.

Hui Han, Shunli Wang, Yandan Zhao, Taiping Yao, Shouhong Ding• 2026

Related benchmarks

TaskDatasetResultRank
Face Forgery DetectionDFDC--
52
Face Forgery DetectionCeleb-DF v2
Video-level AUC95.97
33
Deepfake DetectionWildDeepfake (WDF)
Video-level AUC0.8896
26
Face Forgery DetectionFace Forensics in the Wild (FFIW)
Video-level AUC93.49
15
Face Forgery DetectionCeleb-DF v1
Video-level AUC99.6
8
Explanation quality evaluationDFD 100 randomly selected samples (test)
GPT-4o Score7.55
3
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