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Presentation Attack Detection Methods for Face Recognition Systems: A Comprehensive Survey

机译:人脸识别系统的演示攻击检测方法:综合调查

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The vulnerability of face recognition systems to presentation attacks (also known as direct attacks or spoof attacks) has received a great deal of interest from the biometric community. The rapid evolution of face recognition systems into real-time applications has raised new concerns about their ability to resist presentation attacks, particularly in unattended application scenarios such as automated border control. The goal of a presentation attack is to subvert the face recognition system by presenting a facial biometric artifact. Popular face biometric artifacts include a printed photo, the electronic display of a facial photo, replaying video using an electronic display, and 3D face masks. These have demonstrated a high security risk for state-of-the-art face recognition systems. However, several presentation attack detection (PAD) algorithms (also known as countermeasures or antispoofing methods) have been proposed that can automatically detect and mitigate such targeted attacks. The goal of this survey is to present a systematic overview of the existing work on face presentation attack detection that has been carried out. This paper describes the various aspects of face presentation attacks, including different types of face artifacts, state-of-the-art PAD algorithms and an overview of the respective research labs working in this domain, vulnerability assessments and performance evaluation metrics, the outcomes of competitions, the availability of public databases for benchmarking new PAD algorithms in a reproducible manner, and finally a summary of the relevant international standardization in this field. Furthermore, we discuss the open challenges and future work that need to be addressed in this evolving field of biometrics.
机译:人脸识别系统易受呈现攻击(也称为直接攻击或欺骗攻击)的攻击,引起了生物识别界的极大关注。人脸识别系统向实时应用程序的快速发展引起了人们对其抵抗呈现攻击的能力的新关注,特别是在无人值守的应用程序场景(例如自动边界控制)中。呈现攻击的目的是通过呈现面部生物特征伪影来颠覆面部识别系统。流行的面部生物识别伪像包括打印的照片,面部照片的电子显示屏,使用电子显示屏播放视频以及3D面罩。这些都证明了最新的人脸识别系统存在很高的安全风险。但是,已经提出了几种表示攻击检测(PAD)算法(也称为对策或反欺骗方法),它们可以自动检测和缓解此类目标攻击。这项调查的目的是提供有关已进行的面部表情攻击检测的现有工作的系统概述。本文介绍了面部表情攻击的各个方面,包括不同类型的面部伪像,最新的PAD算法以及在此领域工作的各个研究实验室的概述,漏洞评估和性能评估指标,竞赛,以可复制的方式对新PAD算法进行基准测试的公共数据库的可用性,最后是该领域相关国际标准化的摘要。此外,我们讨论了在这个不断发展的生物识别领域需要解决的开放挑战和未来工作。

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