Morphing attacks are a threat to biometric systems where the biometric reference in an identity document can be altered. This form of attack presents an important issue in applications relying on identity documents such as border security or access control. Research in generation of face morphs and their detection is developing rapidly, however very few datasets with morphing attacks and open-source detection toolkits are publicly available. This paper bridges this gap by providing two datasets and the corresponding code for four types of morphing attacks: two that rely on facial landmarks based on OpenCV and FaceMorpher, and two that use StyleGAN 2 to generate synthetic morphs. We also conduct extensive experiments to assess the vulnerability of four state-of-the-art face recognition systems, including FaceNet, VGG-Face, ArcFace, and ISV. Surprisingly, the experiments demonstrate that, although visually more appealing, morphs based on StyleGAN 2 do not pose a significant threat to the state to face recognition systems, as these morphs were outmatched by the simple morphs that are based facial landmarks.
翻译:软体攻击是对生物鉴别系统的威胁,在这种系统中,身份证件的生物鉴别参考可以改变。这种攻击形式在依赖身份文件的应用方面是一个重要问题,例如边境安全或出入控制。对面形的生成及其探测的研究正在迅速发展,然而,很少有具有变形攻击和公开源检测工具包的数据集可以公开提供。本文通过提供两种数据集和对四种变形攻击的相应代码来弥补这一差距:两种攻击依赖基于 OpenCV和FaceMorpher的面部标志,两种攻击使用StyleGAN 2来生成合成形状。我们还进行了广泛的实验,以评估四个最先进的面形识别系统的脆弱性,包括FaceNet、VGG-Face、ArcFace和ISV。 令人惊讶的是,实验表明,虽然在视觉上更令人感兴趣的是,基于SyleGAN 2的形态并没有对国家面部识别系统构成重大威胁,因为这些形状与基于面部标志的简单形状相配比。