Generalized Face Anti-Spoofing via Multi-Task Learning and One-Side Meta Triplet Loss

11/29/2022
by   Chu-Chun Chuang, et al.
0

With the increasing variations of face presentation attacks, model generalization becomes an essential challenge for a practical face anti-spoofing system. This paper presents a generalized face anti-spoofing framework that consists of three tasks: depth estimation, face parsing, and live/spoof classification. With the pixel-wise supervision from the face parsing and depth estimation tasks, the regularized features can better distinguish spoof faces. While simulating domain shift with meta-learning techniques, the proposed one-side triplet loss can further improve the generalization capability by a large margin. Extensive experiments on four public datasets demonstrate that the proposed framework and training strategies are more effective than previous works for model generalization to unseen domains.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset