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Scalable Face Security Vision Foundation Model for Deepfake, Diffusion, and Spoofing Detection

About

With abundant, unlabeled real faces, how can we learn robust and transferable facial representations to boost generalization across various face security tasks? We make the first attempt and propose FS-VFM, a scalable self-supervised pre-training framework, to learn fundamental representations of real face images. We introduce three learning objectives, namely 3C, that synergize masked image modeling (MIM) and instance discrimination (ID), empowering FS-VFM to encode both local patterns and global semantics of real faces. Specifically, we formulate various facial masking strategies for MIM and devise a simple yet effective CRFR-P masking, which explicitly prompts the model to pursue meaningful intra-region Consistency and challenging inter-region Coherency. We present a reliable self-distillation mechanism that seamlessly couples MIM with ID to establish underlying local-to-global Correspondence. After pre-training, vanilla vision transformers (ViTs) serve as universal Vision Foundation Models for downstream Face Security tasks: cross-dataset deepfake detection, cross-domain face anti-spoofing, and unseen diffusion facial forensics. To efficiently transfer the pre-trained FS-VFM, we further propose FS-Adapter, a lightweight plug-and-play bottleneck atop the frozen backbone with a novel real-anchor contrastive objective. Extensive experiments on 11 public benchmarks demonstrate that our FS-VFM consistently generalizes better than diverse VFMs, spanning natural and facial domains, fully, weakly, and self-supervised paradigms, small, base, and large ViT scales, and even outperforms SOTA task-specific methods, while FS-Adapter offers an excellent efficiency-performance trade-off. The code and models are available on https://fsfm-3c.github.io/fsvfm.html.

Gaojian Wang, Feng Lin, Tong Wu, Zhisheng Yan, Kui Ren• 2025

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC
AUC85.5
230
Deepfake DetectionCDF v2
Video-level AUC95.4
48
Image Deepfake DetectionFFIW
AUC0.906
47
Deepfake DetectionDFD v1 (test)
AUC96.2
16
Deepfake DetectionDS v1
AUROC91.8
8
Deepfake DetectionDS v2
AUROC80.4
8
Deepfake DetectionCDF v3
AUROC85.1
8
Deepfake DetectionPGF
AUROC90.3
8
Deepfake DetectionRF
AUROC (%)74.6
8
Deepfake DetectionFSh
AUROC86.6
8
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