S. Venkatesh, K. Raja, Raghavendra Ramachandra, C. Busch
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引用次数: 19
Abstract
Face morphing attacks have raised critical concerns as they demonstrate a new vulnerability of Face Recognition Systems (FRS), which are widely deployed in border control applications. The face morphing process uses the images from multiple data subjects and performs an image blending operation to generate a morphed image of high quality. The generated morphed image exhibits similar visual characteristics corresponding to the biometric characteristics of the data subjects that contributed to the composite image and thus making it difficult for both humans and FRS, to detect such attacks. In this paper, we report a systematic investigation on the vulnerability of the Commercial-Off- The-Shelf (COTS) FRS when morphed images under the influence of ageing are presented. To this extent, we have introduced a new morphed face dataset with ageing derived from the publicly available MORPH II face dataset, which we refer to as MorphAge dataset. The dataset has two bins based on age intervals, the first bin - MorphAge-I dataset has 1002 unique data subjects with the age variation of 1 year to 2 years while the MorphAge-II dataset consists of 516 data subjects whose age intervals are from 2 years to 5 years. To effectively evaluate the vulnerability for morphing attacks, we also introduce a new evaluation metric, namely the Fully Mated Morphed Presentation Match Rate (FMMPMR), to quantify the vulnerability effectively in a realistic scenario. Extensive experiments are carried out using two different COTS FRS (COTS I Cognitec FaceVACS-SDK Version 9.4.2 and COTS II - Neurotechnology version 10.0) to quantify the vulnerability with ageing. Further, we also evaluate five different Morph Attack Detection (MAD) techniques to benchmark their detection performance with respect to ageing.
人脸变形攻击引起了人们的严重关注,因为它们展示了人脸识别系统(FRS)的一个新的漏洞,人脸识别系统被广泛应用于边境控制应用。人脸变形过程使用来自多个数据主体的图像,并进行图像混合操作以生成高质量的变形图像。生成的变形图像显示出与构成合成图像的数据主体的生物特征相对应的相似视觉特征,从而使人类和FRS都难以检测到此类攻击。本文系统地研究了商用现货FRS在老化影响下变形图像的脆弱性。在这种程度上,我们引入了一个新的变形面部数据集,该数据集来自公开可用的MORPH II面部数据集,我们称之为MorphAge数据集。数据集根据年龄间隔分为两个bin,第一个bin - MorphAge-I数据集有1002个唯一的数据主体,年龄变化范围为1 ~ 2岁,而MorphAge-II数据集有516个数据主体,年龄间隔为2 ~ 5岁。为了有效地评估变形攻击的脆弱性,我们还引入了一个新的评估指标,即完全匹配的变形表示匹配率(FMMPMR),以便在现实场景中有效地量化脆弱性。使用两种不同的COTS FRS (COTS I Cognitec FaceVACS-SDK Version 9.4.2和COTS II - Neurotechnology Version 10.0)进行了大量实验,以量化老化的漏洞。此外,我们还评估了五种不同的变形攻击检测(MAD)技术,以基准测试它们在老化方面的检测性能。