Fingerprint recognition systems have been deployed globally in numerous applications including personal devices, forensics, law enforcement, banking, and national identity systems. For these systems to be socially acceptable and trustworthy, it is critical that they perform equally well across different demographic groups. In this work, we propose a formal statistical framework to test for the existence of bias (demographic differentials) in fingerprint recognition across four major demographic groups (white male, white female, black male, and black female) for two state-of-the-art (SOTA) fingerprint matchers operating in verification and identification modes. Experiments on two different fingerprint databases (with 15,468 and 1,014 subjects) show that demographic differentials in SOTA fingerprint recognition systems decrease as the matcher accuracy increases and any small bias that may be evident is likely due to certain outlier, low-quality fingerprint images.
翻译:在包括个人装置、法医、执法、银行和国家身份系统在内的许多应用中,指纹识别系统已经在全球部署,这些系统要在社会上被接受和值得信赖,就必须在不同人口群体之间同样运作;在这项工作中,我们提议一个正式的统计框架,以测试在四个主要人口群体(白人男性、白人女性、黑人男性和黑人女性)的指纹识别方面存在的偏差(人口差异),这四个人口群体中,有两个最先进的指纹匹配者(SOTA)在核查和识别模式中工作;对两个不同的指纹数据库(15、468和1 014个主题)的实验显示,随着匹配准确度的提高,SOTA指纹识别系统中的人口差异会缩小,而且由于某些外部、低质量的指纹图像可能明显存在任何小的偏差。