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Detect Any Deepfakes: Segment Anything Meets Face Forgery Detection and Localization

About

The rapid advancements in computer vision have stimulated remarkable progress in face forgery techniques, capturing the dedicated attention of researchers committed to detecting forgeries and precisely localizing manipulated areas. Nonetheless, with limited fine-grained pixel-wise supervision labels, deepfake detection models perform unsatisfactorily on precise forgery detection and localization. To address this challenge, we introduce the well-trained vision segmentation foundation model, i.e., Segment Anything Model (SAM) in face forgery detection and localization. Based on SAM, we propose the Detect Any Deepfakes (DADF) framework with the Multiscale Adapter, which can capture short- and long-range forgery contexts for efficient fine-tuning. Moreover, to better identify forged traces and augment the model's sensitivity towards forgery regions, Reconstruction Guided Attention (RGA) module is proposed. The proposed framework seamlessly integrates end-to-end forgery localization and detection optimization. Extensive experiments on three benchmark datasets demonstrate the superiority of our approach for both forgery detection and localization. The codes will be released soon at https://github.com/laiyingxin2/DADF.

Yingxin Lai, Zhiming Luo, Zitong Yu• 2023

Related benchmarks

TaskDatasetResultRank
Marine Animal SegmentationMAS3K (test)
mIoU0.742
47
Marine Animal SegmentationRMAS (test)
mIoU68.6
47
Salient Object DetectionUSOD10k
S-alpha0.9051
40
Marine Animal SegmentationRUWI (test)
mIoU88.1
35
Marine Animal SegmentationUFO120 (test)
mIoU76.8
35
Marine Animal SegmentationRUWI
mIoU88.1
22
Marine Animal SegmentationUFO120
mIoU0.768
22
Underwater Salient Object DetectionUSOD10k 1.0 (test)
S_alpha0.9051
21
Marine Animal SegmentationMAS3K
mIoU0.742
15
Marine Animal SegmentationRMAS
mIoU68.6
15
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