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

Self-Domain Adaptation for Face Anti-Spoofing

About

Although current face anti-spoofing methods achieve promising results under intra-dataset testing, they suffer from poor generalization to unseen attacks. Most existing works adopt domain adaptation (DA) or domain generalization (DG) techniques to address this problem. However, the target domain is often unknown during training which limits the utilization of DA methods. DG methods can conquer this by learning domain invariant features without seeing any target data. However, they fail in utilizing the information of target data. In this paper, we propose a self-domain adaptation framework to leverage the unlabeled test domain data at inference. Specifically, a domain adaptor is designed to adapt the model for test domain. In order to learn a better adaptor, a meta-learning based adaptor learning algorithm is proposed using the data of multiple source domains at the training step. At test time, the adaptor is updated using only the test domain data according to the proposed unsupervised adaptor loss to further improve the performance. Extensive experiments on four public datasets validate the effectiveness of the proposed method.

Jingjing Wang, Jingyi Zhang, Ying Bian, Youyi Cai, Chunmao Wang, Shiliang Pu• 2021

Related benchmarks

TaskDatasetResultRank
Face Anti-SpoofingOULU-NPU ICM → O
HTER23.1
115
Face Anti-SpoofingIdiap Replay-Attack OCM → I
HTER15.6
96
Face Anti-SpoofingMSU-MFSD OCI → M
HTER15.4
85
Face Anti-SpoofingCASIA-FASD OMI → C
HTER24.5
41
Face Anti-SpoofingReplay-Attack I (test)
HTER15.6
33
Face Anti-SpoofingMSU-MFSD M (test)
HTER15.4
33
Face Anti-SpoofingCASIA-MFSD O&M&I to C (test)
HTER24.5
28
Face Presentation Attack DetectionCASIA-MFSD Target (test)
HTER24.5
15
Face Presentation Attack DetectionOULU-NPU Target (test)
HTER23.1
15
Showing 9 of 9 rows

Other info

Follow for update