Learning facial details for high-resolution face anti-spoofing

Yan Zhou, Haohai Wu, Xiangyu Liu, Fanzhi Zeng, Yuexia Zhou
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Abstract

With face recognition playing a crucial role in biometric identification technology, Face Anti-Spoofing (FAS) has powerful effects on finding out whether a presented face is live or spoof. As the most common attacks such as photo attacks, print attacks, and video replay attacks can be effectively resolved, high-resolution attacks are easy to occur but still challenging for effective face spoofing because of the rich local facial details. In this paper, a Diagonal-Fusion Transformer network (DFT) which adds self-attention from the vision transformer is proposed. It is designed to learn the facial context information and relation between the local features of the face, and thus enhance the discriminative features of the real face and the fake face to improve the classification efficiency. Furthermore, a Spoofing Region Detection network (SRD) parallel with the DFT network is proposed for fine- grained spoof detection through the enlargement of local facial details. Through comprehensive experiments, the model achieves state-of-the-art results on public benchmark datasets such as OULU and CelebA-Spoof.
学习面部细节,实现高分辨率人脸防欺骗
人脸识别在生物特征识别技术中起着至关重要的作用,人脸反欺骗(FAS)在识别人脸是真实的还是被欺骗的方面具有强大的作用。由于照片攻击、打印攻击、视频重放攻击等最常见的攻击可以有效解决,高分辨率攻击虽然容易发生,但由于面部局部细节丰富,对有效的人脸欺骗仍然具有挑战性。提出了一种增加视觉变压器自关注的对角融合变压器网络(DFT)。它的目的是学习人脸上下文信息和人脸局部特征之间的关系,从而增强真假人脸的判别特征,提高分类效率。在此基础上,提出了一种与DFT网络并行的欺骗区域检测网络(SRD),通过扩大局部人脸细节来实现细粒度欺骗检测。通过综合实验,该模型在OULU和CelebA-Spoof等公共基准数据集上取得了最先进的结果。
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