制作一个全景面部呈现攻击检测器

Suril Mehta, A. Uberoi, Akshay Agarwal, Mayank Vatsa, Richa Singh
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引用次数: 17

摘要

随着科技的进步和面部照片编辑在社交媒体领域的日益普及,面部交换和面部变形等工具越来越容易被公众使用。它为不同类型的面部呈现攻击提供了可能性,冒名顶替者可以利用这种攻击来未经授权访问生物识别系统。此外,3D打印机的广泛可用性导致了从打印攻击到3D掩码攻击的转变。随着攻击类型的增加,有必要提出一种通用的、普遍存在的算法,对这些攻击进行全面的观察,并且可以检测出欺骗的图像,而不管使用哪种方法。本文的关键贡献是设计了一种基于深度学习的全光算法,用于使用交叉不对称损失函数(CALF)检测数字和物理表示攻击。在三种情况下评估了数字和物理攻击的性能:无处不在的环境、单个数据库和交叉攻击/跨数据库。实验结果表明,该算法具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crafting A Panoptic Face Presentation Attack Detector
With the advancements in technology and growing popularity of facial photo editing in the social media landscape, tools such as face swapping and face morphing have become increasingly accessible to the general public. It opens up the possibilities for different kinds of face presentation attacks, which can be taken advantage of by impostors to gain unauthorized access of a biometric system. Moreover, the wide availability of 3D printers has caused a shift from print attacks to 3D mask attacks. With increasing types of attacks, it is necessary to come up with a generic and ubiquitous algorithm with a panoptic view of these attacks, and can detect a spoofed image irrespective of the method used. The key contribution of this paper is designing a deep learning based panoptic algorithm for detection of both digital and physical presentation attacks using Cross Asymmetric Loss Function (CALF). The performance is evaluated for digital and physical attacks in three scenarios: ubiquitous environment, individual databases, and cross-attack/cross-database. Experimental results showcase the superior performance of the proposed presentation attack detection algorithm.
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