Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

On the Effectiveness of Vision Transformers for Zero-shot Face Anti-Spoofing

About

The vulnerability of face recognition systems to presentation attacks has limited their application in security-critical scenarios. Automatic methods of detecting such malicious attempts are essential for the safe use of facial recognition technology. Although various methods have been suggested for detecting such attacks, most of them over-fit the training set and fail in generalizing to unseen attacks and environments. In this work, we use transfer learning from the vision transformer model for the zero-shot anti-spoofing task. The effectiveness of the proposed approach is demonstrated through experiments in publicly available datasets. The proposed approach outperforms the state-of-the-art methods in the zero-shot protocols in the HQ-WMCA and SiW-M datasets by a large margin. Besides, the model achieves a significant boost in cross-database performance as well.

Anjith George, Sebastien Marcel• 2020

Related benchmarks

TaskDatasetResultRank
Face Anti-SpoofingOULU-NPU ICM → O
HTER15.67
115
Face Anti-SpoofingIdiap Replay-Attack OCM → I
HTER16.64
96
Face Anti-SpoofingMSU-MFSD OCI → M
HTER10.95
85
Face Anti-SpoofingCASIA-MFSD O&M&I to C
HTER14.33
16
3D Mask Face Presentation Attack Detection3DMAD -> HKBU-MARS V1+ (cross-dataset)
EER20.6
14
3D Mask Face Presentation Attack DetectionHiFiMask -> 3DMAD (cross-dataset)
HTER26.3
7
Face Anti-SpoofingHiFiMask Protocol 1 (Intra-dataset)
HTER2.63
7
Showing 7 of 7 rows

Other info

Follow for update