论文标题
关于主攻击的(有限)概括及其与面部表征能力的关系
On the (Limited) Generalization of MasterFace Attacks and Its Relation to the Capacity of Face Representations
论文作者
论文摘要
主脸是可以成功匹配大部分人口的面部图像。由于他们的一代不需要访问注册主题的信息,因此主攻击代表了广泛使用的面部识别系统的潜在安全风险。先前的作品提出了生成此类图像的方法,并证明这些攻击可以严重损害面部识别。但是,先前的工作遵循了评估设置,包括旧识别模型,有限的跨数据组和跨模型评估以及使用低规模测试数据。这使得很难说明这些攻击的普遍性。在这项工作中,我们全面分析了主攻击在经验和理论研究中的普遍性。实证研究包括使用六种最先进的FR模型,跨模型和跨模型评估协议,以及使用大小和方差明显更高的测试数据集。结果表明,当Masterfaces在面部识别模型上训练与用于测试的识别模型时,其概括性低。在这些情况下,攻击性能类似于零富特制的攻击。在理论研究中,我们在面部空间中的身份很好地分开的假设下定义和估计面部容量和最大主场覆盖范围。当前提高面部识别性公平性和普遍性的趋势表明,未来系统的脆弱性可能会进一步降低。未来的工作可能会分析主空间的实用性,以理解和增强面部识别模型的鲁棒性。
A MasterFace is a face image that can successfully match against a large portion of the population. Since their generation does not require access to the information of the enrolled subjects, MasterFace attacks represent a potential security risk for widely-used face recognition systems. Previous works proposed methods for generating such images and demonstrated that these attacks can strongly compromise face recognition. However, previous works followed evaluation settings consisting of older recognition models, limited cross-dataset and cross-model evaluations, and the use of low-scale testing data. This makes it hard to state the generalizability of these attacks. In this work, we comprehensively analyse the generalizability of MasterFace attacks in empirical and theoretical investigations. The empirical investigations include the use of six state-of-the-art FR models, cross-dataset and cross-model evaluation protocols, and utilizing testing datasets of significantly higher size and variance. The results indicate a low generalizability when MasterFaces are training on a different face recognition model than the one used for testing. In these cases, the attack performance is similar to zero-effort imposter attacks. In the theoretical investigations, we define and estimate the face capacity and the maximum MasterFace coverage under the assumption that identities in the face space are well separated. The current trend of increasing the fairness and generalizability in face recognition indicates that the vulnerability of future systems might further decrease. Future works might analyse the utility of MasterFaces for understanding and enhancing the robustness of face recognition models.