Face anti-spoofing technology is critical to prevent face recognition systems from experiencing a security breach. Most of presentation attack detection (PAD) methods consider the task as a supervised binary classification problem. Many of these methods struggle to grasp adequate spoofing cues and generalize poorly. In this paper, we formulate the face anti-spoofing detection as an anomaly detection task to tackle the generalization issue. A novel deep network is proposed by using adversarial training under semi-supervised learning framework. The underlying structure of training data is captured in the image reconstruction space and can be further restricted in the space of latent representation in a discriminant manner, leading to a more robust spoof detector. In the test, the attacks are regarded as out-of-distributions samples that naturally exhibit a higher feature reconstruction error in the latent space than real samples in the dataset. Experiments show that our model is clearly superior over cutting-edge semi-supervised abnormal detectors and achieves state-of-the-art results on both intra- and inter-database testing.
Cheng‐Wei ChenJing LiuYuan XieYin Xiao BanChunyun WuYiqing TaoHaichuan Song
Junting ChenJiwen DongQingtao HouShenyuan LiXizhan GaoSijie Niu
Gabriele Di CerboAli HirsaAhmad Shayaan
Jingtian XiaYan TangXi JiaLinlin ShenZhihui Lai
Junzhi LiXiangwei ZhuMingjun OuyangWanqing LiZhengkun ChenQixiang Fu