Due to their convenience and high accuracy, face recognition systems are widely employed in governmental and personal security applications to automatically recognise individuals. Despite recent advances, face recognition systems have shown to be particularly vulnerable to identity attacks (i.e., digital manipulations and attack presentations). Identity attacks pose a big security threat as they can be used to gain unauthorised access and spread misinformation. In this context, most algorithms for detecting identity attacks generalise poorly to attack types that are unknown at training time. To tackle this problem, we introduce a differential anomaly detection framework in which deep face embeddings are first extracted from pairs of images (i.e., reference and probe) and then combined for identity attack detection. The experimental evaluation conducted over several databases shows a high generalisation capability of the proposed method for detecting unknown attacks in both the digital and physical domains.
翻译:由于方便和高度精确,在政府和个人安全应用程序中广泛使用面部识别系统,自动识别个人。尽管最近有所进展,面部识别系统显示特别容易受到身份攻击(即数字操纵和攻击演示),身份攻击构成巨大的安全威胁,因为可以利用身份攻击获得未经授权的准入和散布错误信息。在这方面,大多数身份攻击探测算法都笼统地概括了身份攻击在培训时未知的类型。为了解决这一问题,我们引入了一个差异异常探测框架,首先从一对图像(即参考和探测)中提取面部深层嵌入物,然后结合进行身份攻击探测。对几个数据库进行的实验性评估显示,在数字和物理领域,拟议方法都具有高度的概括性,可以探测未知袭击。