Non-referential face image quality assessment methods have gained popularity as a pre-filtering step on face recognition systems. In most of them, the quality score is usually designed with face matching in mind. However, a small amount of work has been done on measuring their impact and usefulness on Presentation Attack Detection (PAD). In this paper, we study the effect of quality assessment methods on filtering bona fide and attack samples, their impact on PAD systems, and how the performance of such systems is improved when training on a filtered (by quality) dataset. On a Vision Transformer PAD algorithm, a reduction of 20% of the training dataset by removing lower quality samples allowed us to improve the BPCER by 3% in a cross-dataset test.
翻译:非优惠面部图像质量评估方法作为面部识别系统的一个预过滤步骤,已日益受到欢迎,其中多数质量评分通常设计为面部匹配;然而,在衡量其对于演示攻击检测(PAD)的影响和有用性方面做了少量工作。 在本文中,我们研究了质量评估方法对过滤真实性和攻击性样本的影响、其对PAD系统的影响,以及当培训经过过滤(按质量)的数据集时如何改进这些系统的性能。 在愿景变异PAD算法中,通过去除低质量样本,减少了20%的培训数据集,使我们能够在交叉数据测试中将BPCER改进3%。