基于对抗域自适应的跨数据库人脸表示攻击检测改进

Guoqing Wang, Hu Han, S. Shan, Xilin Chen
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引用次数: 55

摘要

人脸识别技术正被广泛应用于从门禁到智能手机解锁等诸多领域。因此,人脸呈现攻击检测技术(PAD)越来越受到人们的关注,以保证人脸识别系统的安全。传统的PAD方法主要假设训练场景和测试场景在成像条件(照明、场景、相机传感器等)上相似,因此可能缺乏很好的泛化能力。在这项工作中,我们提出了一种端到端学习方法,通过对抗性领域自适应利用源领域的先验知识来提高PAD泛化能力。我们首先建立了一个考虑三重态损耗的源域PAD模型。随后,我们利用源域和目标域模型对目标域进行对抗性域自适应学习共享嵌入空间,其中鉴别器不能可靠地预测样本是来自源域还是来自目标域。最后,利用嵌入空间中的k-近邻(k-NN)分类器在目标域中进行PAD。该方法在多个公共领域人脸识别数据库中显示出良好的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Cross-database Face Presentation Attack Detection via Adversarial Domain Adaptation
Face recognition (FR) is being widely used in many applications from access control to smartphone unlock. As a result, face presentation attack detection (PAD) has drawn increasing attentions to secure the FR systems. Traditional approaches for PAD mainly assume that training and testing scenarios are similar in imaging conditions (illumination, scene, camera sensor, etc.), and thus may lack good generalization capability into new application scenarios. In this work, we propose an end-to-end learning approach to improve PAD generalization capability by utilizing prior knowledge from source domain via adversarial domain adaptation. We first build a source domain PAD model optimized with triplet loss. Subsequently, we perform adversarial domain adaptation w.r.t. the target domain to learn a shared embedding space by both the source and target domain models, in which the discriminator cannot reliably predict whether a sample is from the source or target domain. Finally, PAD in the target domain is performed with k-nearest neighbors (k-NN) classifier in the embedding space. The proposed approach shows promising generalization capability in a number of public-domain face PAD databases.
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