Generalizable Representation Learning for Mixture Domain Face Anti-Spoofing
About
Face anti-spoofing approach based on domain generalization(DG) has drawn growing attention due to its robustness forunseen scenarios. Existing DG methods assume that the do-main label is known.However, in real-world applications, thecollected dataset always contains mixture domains, where thedomain label is unknown. In this case, most of existing meth-ods may not work. Further, even if we can obtain the domainlabel as existing methods, we think this is just a sub-optimalpartition. To overcome the limitation, we propose domain dy-namic adjustment meta-learning (D2AM) without using do-main labels, which iteratively divides mixture domains viadiscriminative domain representation and trains a generaliz-able face anti-spoofing with meta-learning. Specifically, wedesign a domain feature based on Instance Normalization(IN) and propose a domain representation learning module(DRLM) to extract discriminative domain features for cluster-ing. Moreover, to reduce the side effect of outliers on cluster-ing performance, we additionally utilize maximum mean dis-crepancy (MMD) to align the distribution of sample featuresto a prior distribution, which improves the reliability of clus tering. Extensive experiments show that the proposed methodoutperforms conventional DG-based face anti-spoofing meth-ods, including those utilizing domain labels. Furthermore, weenhance the interpretability through visualizatio
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Face Anti-Spoofing | OULU-NPU ICM → O | HTER15.27 | 115 | |
| Face Anti-Spoofing | Idiap Replay-Attack OCM → I | HTER15.43 | 96 | |
| Face Anti-Spoofing | MSU-MFSD OCI → M | HTER12.7 | 85 | |
| Face Anti-Spoofing | CASIA-FASD OMI → C | HTER20.98 | 41 | |
| Face Anti-Spoofing | Replay-Attack I (test) | HTER15.43 | 33 | |
| Face Anti-Spoofing | MSU-MFSD M (test) | HTER12.7 | 33 | |
| Face Anti-Spoofing | CASIA-MFSD O&M&I to C (test) | HTER20.98 | 28 | |
| Face Anti-Spoofing | MSU-MFSD (M) & Replay-Attack (I) to CASIA-MFSD (C) (test) | -- | 20 | |
| Face Anti-Spoofing | CASIA-MFSD O&M&I to C | HTER20.98 | 16 | |
| Face Presentation Attack Detection | OULU-NPU Target (test) | HTER15.27 | 15 |