Vulnerability Assessment and Detection of Makeup Presentation Attacks

C. Rathgeb, P. Drozdowski, Daniel Fischer, C. Busch
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引用次数: 10

Abstract

The accuracy of face recognition systems can be negatively affected by facial cosmetics which have the ability to substantially alter the facial appearance. Recently, it was shown that makeup can also be abused to launch so-called makeup presentation attacks. In such attacks, an attacker might apply heavy makeup to achieve the facial appearance of a target subject for the purpose of impersonation.In this work, we assess the vulnerability of a widely used open-source face recognition system, i.e. ArcFace, to makeup presentation attacks using the publicly available Makeup Induced Face Spoofing (MIFS) and FRGCv2 databases. It is shown that the success rate of makeup presentation attacks in the MIFS database has negligible impact on the security of the face recognition system. Further, we employ image warping to simulate improved makeup presentation attacks which reveal a significantly higher success rate. Moreover, we propose a makeup attack detection scheme which compares face depth data with face depth reconstructions obtained from RGB images of potential makeup presentation attacks. Significant variations between the two sources of information indicate facial shape alterations induced by strong use of makeup, i.e. potential makeup presentation attacks. Conceptual experiments on the MIFS database confirm the soundness of the presented approach.
化妆呈现攻击的脆弱性评估与检测
人脸识别系统的准确性可能受到具有实质性改变面部外观能力的面部化妆品的负面影响。最近,有研究表明,化妆也可能被滥用,以发动所谓的化妆展示攻击。在这种攻击中,攻击者可能会用浓妆来实现目标对象的面部外观,以达到模仿的目的。在这项工作中,我们使用公开可用的化妆诱导面部欺骗(MIFS)和FRGCv2数据库评估了广泛使用的开源人脸识别系统ArcFace在化妆演示攻击中的脆弱性。研究表明,在MIFS数据库中,化妆呈现攻击的成功率对人脸识别系统的安全性影响可以忽略不计。此外,我们使用图像扭曲来模拟改进的化妆演示攻击,结果显示成功率显着提高。此外,我们提出了一种化妆攻击检测方案,该方案将人脸深度数据与从潜在化妆呈现攻击的RGB图像中获得的人脸深度重建进行比较。两种信息来源之间的显著差异表明,强烈使用化妆品会引起面部形状的改变,即潜在的化妆表现攻击。在MIFS数据库上的概念实验证实了所提出方法的有效性。
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