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.
翻译:随着面部剖面攻击的日益变化,模型的概括化成为实际面部反排面系统的一项基本挑战。本文件提出了一个普遍面部反排面框架,由三项任务组成:深度估计、面面面分析、现场/面部分类。由于从面部剖面和深度估面任务进行像素式监督,正规化的特征可以更好地区分面部。在用元学习技术模拟域转移的同时,拟议的单面三重损失可以大大改善一般化能力。对四个公共数据集的广泛实验表明,拟议的框架和培训战略比以往将模型概括到无形领域的工程更为有效。