On Effectiveness of Anomaly Detection Approaches against Unseen Presentation Attacks in Face Anti-spoofing

O. Nikisins, A. Mohammadi, André Anjos, S. Marcel
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引用次数: 82

Abstract

While face recognition systems got a significant boost in terms of recognition performance in recent years, they are known to be vulnerable to presentation attacks. Up to date, most of the research in the field of face anti-spoofing or presentation attack detection was considered as a two-class classification task: features of bona-fide samples versus features coming from spoofing attempts. The main focus has been on boosting the anti-spoofing performance for databases with identical types of attacks across both training and evaluation subsets. However, in realistic applications the types of attacks are likely to be unknown, potentially occupying a broad space in the feature domain. Therefore, a failure to generalize on unseen types of attacks is one of the main potential challenges in existing anti-spoofing approaches. First, to demonstrate the generalization issues of two-class anti-spoofing systems we establish new evaluation protocols for existing publicly available databases. Second, to unite the data collection efforts of various institutions we introduce a challenging Aggregated database composed of 3 publicly available datasets: Replay-Attack, Replay-Mobile and MSU MFSD, reporting the performance on it. Third, considering existing limitations we propose a number of systems approaching a task of presentation attack detection as an anomaly detection, or a one-class classification problem, using only bona-fide features in the training stage. Using less training data, hence requiring less effort in the data collection, the introduced approach demonstrates a better generalization properties against previously unseen types of attacks on the proposed Aggregated database.
人脸反欺骗中异常检测方法对不可见表示攻击的有效性研究
虽然近年来人脸识别系统在识别性能方面得到了显著提升,但众所周知,它们很容易受到表示攻击。迄今为止,人脸防欺骗或表示攻击检测领域的大多数研究都被认为是一个两类分类任务:真实样本的特征和来自欺骗尝试的特征。主要的重点是提高在训练和评估子集中具有相同攻击类型的数据库的抗欺骗性能。然而,在实际应用中,攻击的类型很可能是未知的,可能会在特征域中占据很大的空间。因此,不能对不可见的攻击类型进行泛化是现有反欺骗方法的主要潜在挑战之一。首先,为了证明两类反欺骗系统的泛化问题,我们为现有的公开可用数据库建立了新的评估协议。其次,为了联合各个机构的数据收集工作,我们引入了一个具有挑战性的汇总数据库,该数据库由3个公开可用的数据集组成:重播-攻击,重播-移动和MSU MFSD,并报告其性能。第三,考虑到现有的局限性,我们提出了一些系统来处理表示攻击检测的任务,作为异常检测或单类分类问题,在训练阶段仅使用真实特征。使用更少的训练数据,因此需要更少的数据收集工作,所引入的方法展示了更好的泛化属性,以对抗先前未见过的对所提议的聚合数据库的攻击类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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