新生儿面部变形也可能具有威胁性:脆弱性和检测的初步研究

S. Venkatesh, Raghavendra Ramachandra, K. Raja
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引用次数: 2

摘要

人脸变形攻击对边境管制和护照签发中的人脸识别系统(FRS)构成重大威胁。由于新生儿面部特征的可鉴别性非常有限,因此基于面部生物特征对新生儿进行准确的识别对人类和机器来说都是一个挑战。此外,面部变形的引入加剧了贩卖婴儿的问题,因为它可以挑战人类和机器的面部验证。在本文中,我们提出了新生儿变形图像是否会威胁到FRS的问题,并首次系统地研究了FRS对新生儿变形面孔的脆弱性分析。为了有效地对新生儿面部变形攻击的威胁进行基准测试,我们引入了一个基于42个独特新生儿的面部变形数据集,该数据集包含852张真实图像和2451张变形图像。在新构建的数据集上进行了大量的实验,针对三种不同的变形因素,针对商用现货(COTS) FRS (Cognitec FaceVACS-SDK Version 9.4.2)和基于深度学习的FRS (Arcface)对漏洞进行基准测试。此外,我们还评估了变形攻击检测(MAD)在检测新生儿面部变形攻击方面的性能。我们对四种不同的现成的MAD技术进行了实验,以基准对新生变形攻击的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Morphing of Newborns Can Be Threatening Too : Preliminary Study on Vulnerability and Detection
Face morphing attacks are evolving as a significant threat to the Face Recognition Systems (FRS) operating in border control and passport issuance. As newborn face has very limited discriminative facial characteristics, it is challenging for both human and machines to verify the newborns based on the facial biometrics accurately. Further, the introduction of face morphing elevates the problem of baby trafficking as it can challenge both human and machine-based facial verification. In this paper, we pose a question if the morphed images of newborns can threaten FRS and present first systematic study on the vulnerability analysis of FRS towards morphed faces of newborns. To effectively benchmark threat of newborns’ facial morphing attacks, we introduce a new face morphing dataset constructed based on 42 unique newborns with 852 bona fide and 2451 morphing images. Extensive experiments are carried out on the newly constructed dataset to benchmark the vulnerability against both Commercial-Off-The-Shelf (COTS) FRS (Cognitec FaceVACS-SDK Version 9.4.2) and deep learning based FRS (Arcface) for three different morphing factors. Further, we also evaluate the performance of Morphing Attack Detection (MAD) in detecting such morphing attacks of newborn faces. We conduct experiments on four different Off-The-Shelf MAD techniques to benchmark the detection performance on newborn morph attacks.
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