调查年轻人、中年人和老年人眼部生物识别的公平性

Anoop Krishnan, Ali Almadan, A. Rattani
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引用次数: 4

摘要

许多研究表明,面部生物识别和软生物识别估计方法在性别、种族和年龄组之间存在偏见。最近有一种迫切需要调查不同生物识别模式对公平和值得信赖的生物识别解决方案的部署的偏见。眼生物识别技术因其准确性高、安全性好、隐私性强、易于在移动设备中使用等优点,越来越受到学术界和工业界的关注。2020年的一项最新研究也表明,男性和女性基于眼睛的用户识别是公平的。本文的目的是评估不同年龄群体的眼部生物特征在可见光谱上的公平性;年轻人、中年人和老年人。得益于最新的大规模2020年UFPR眼部生物特征数据集,获得的受试者年龄在18-79岁之间,为本研究提供了便利。实验结果表明,眼生物识别技术在用户验证和性别分类方面具有跨性别和年龄组的总体等效性能。在用户验证和年龄分类中,老年人在低错误匹配率和年轻人的表现差异分别被注意到。这可能归因于这些年龄组生物识别数据的固有特征影响了特定的应用,这表明需要在传感器技术和软件解决方案方面取得进步。
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Investigating Fairness of Ocular Biometrics Among Young, Middle-Aged, and Older Adults
A number of studies suggest bias of the face biometrics, i.e., face recognition and soft-biometric estimation methods, across gender, race, and age-groups. There is a recent urge to investigate the bias of different biometric modalities toward the deployment of fair and trustworthy biometric solutions. Ocular biometrics has obtained increased attention from academia and industry due to its high accuracy, security, privacy, and ease of use in mobile devices. A recent study in 2020 also suggested the fairness of ocular-based user recognition across males and females. This paper aims to evaluate the fairness of ocular biometrics in the visible spectrum among age-groups; young, middle, and older adults. Thanks to the availability of the latest large-scale 2020 UFPR ocular biometric dataset, with subjects acquired in the age range 18–79 years, to facilitate this study. Experimental results suggest the overall equivalent performance of ocular biometrics across gender and age-groups in user verification and gender-classification. Performance difference for older adults at lower false match rate and young adults was noted at user verification and age-classification, respectively. This could be attributed to inherent characteristics of the biometric data from these age-groups impacting specific applications, which suggest a need for advancement in sensor technology and software solutions.
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