Cataract influence on iris recognition performance
Mateusz Trokielewicz, Adam Czajka, Piotr Maciejewicz

TL;DR
This study investigates how cataracts impair the accuracy of iris recognition systems, revealing significant performance degradation through experiments on a newly created database with multiple iris matchers.
Contribution
The paper introduces a new comprehensive database of eye images with cataracts and evaluates the impact on multiple iris recognition methods, highlighting the issue's severity.
Findings
Significant degradation in iris recognition accuracy with cataract-affected eyes
Genuine score increases lead to higher false non-match rates
Analysis of segmentation as a potential source of reliability decrease
Abstract
This paper presents the experimental study revealing weaker performance of the automatic iris recognition methods for cataract-affected eyes when compared to healthy eyes. There is little research on the topic, mostly incorporating scarce databases that are often deficient in images representing more than one illness. We built our own database, acquiring 1288 eye images of 37 patients of the Medical University of Warsaw. Those images represent several common ocular diseases, such as cataract, along with less ordinary conditions, such as iris pattern alterations derived from illness or eye trauma. Images were captured in near-infrared light (used in biometrics) and for selected cases also in visible light (used in ophthalmological diagnosis). Since cataract is a disorder that is most populated by samples in the database, in this paper we focus solely on this illness. To assess the extent…
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