Generating Master Faces for Use in Performing Wolf Attacks on Face Recognition Systems

H. Nguyen, J. Yamagishi, I. Echizen, S. Marcel
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引用次数: 18

Abstract

Due to its convenience, biometric authentication, especial face authentication, has become increasingly mainstream and thus is now a prime target for attackers. Presentation attacks and face morphing are typical types of attack. Previous research has shown that finger- vein- and fingerprint-based authentication methods are susceptible to wolf attacks, in which a wolf sample matches many enrolled user templates. In this work, we demonstrated that wolf (generic) faces, which we call “master faces,” can also compromise face recognition systems and that the master face concept can be generalized in some cases. Motivated by recent similar work in the fingerprint domain, we generated high-quality master faces by using the state-of-the-art face generator StyleGAN in a process called latent variable evolution. Experiments demonstrated that even attackers with limited resources using only pre-trained models available on the Internet can initiate master face attacks. The results, in addition to demonstrating performance from the attacker's point of view, can also be used to clarify and improve the performance of face recognition systems and harden face authentication systems.
生成主脸用于执行狼攻击的人脸识别系统
由于其方便性,生物特征认证,特别是人脸认证,已经成为越来越主流,成为攻击者的主要目标。表现攻击和面部变形是典型的攻击类型。先前的研究表明,基于手指静脉和指纹的身份验证方法容易受到狼攻击,其中狼样本与许多注册用户模板相匹配。在这项工作中,我们证明了狼(通用)脸,我们称之为“主脸”,也可以损害人脸识别系统,并且主脸概念在某些情况下可以推广。受最近指纹领域类似工作的启发,我们使用最先进的人脸生成器StyleGAN在一个称为潜在变量进化的过程中生成了高质量的主人脸。实验表明,即使攻击者资源有限,仅使用互联网上可用的预训练模型,也可以发起主脸攻击。研究结果,除了从攻击者的角度展示性能外,还可用于澄清和改进人脸识别系统的性能,并强化人脸认证系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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