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Database of iris images acquired in the presence of ocular pathologies and assessment of iris recognition reliability for disease-affected eyes

机译:在存在眼部病理学和对疾病影响的眼睛的虹膜识别可靠性的情况下获得的虹膜图像数据库

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This paper presents a database of iris images collected from disease affected eyes and an analysis related to the influence of ocular diseases on iris recognition reliability. For that purpose we have collected a database of iris images acquired for 91 different eyes during routine ophthalmology visits. This collection gathers samples for healthy eyes as well as those with various eye pathologies, including cataract, acute glaucoma, posterior and anterior synechiae, retinal detachment, rubeosis iridis, corneal vascularization, corneal grafting, iris damage and atrophy and corneal ulcers, haze or opacities. To our best knowledge this is the first database of such kind that will be made publicly available. In the analysis the data were divided into five groups of samples presenting similar anticipated impact on iris recognition: 1) healthy (no impact), 2) unaffected, clear iris (although the illness was detected), 3) geometrically distorted irides, 4) distorted iris tissue and 5) obstructed iris tissue. Three different iris recognition methods (MIRLIN, VeriEye and OSIRIS) were then used to find differences in average genuine and impostor comparison scores calculated for healthy eyes and those impacted by a disease. Specifically, we obtained significantly worse genuine comparison scores for all iris matchers and all disease-affected eyes when compared to a group of healthy eyes, what have a high potential of impacting false non-match rate.
机译:本文展示疾病影响眼睛虹膜采集图像数据库和相关的眼部疾病的虹膜识别可靠性的影响进行了分析。为此目的,我们已经收集在例行眼科访问91只不同的眼睛获取的虹膜图像数据库。这个集合收集用于健康眼样品以及那些具有各种眼部疾病,包括白内障,急性青光眼,后侧和前粘连,视网膜脱离,虹膜发红,角膜血管,角膜移植,虹膜的损伤,萎缩和角膜溃疡,雾度或不透明度。据我们所知,这是这类将可公开获得的第一个数据库。在分析中的数据被分成五组上呈现虹膜识别类似预期的冲击样品:1)健康(无影响),2)的影响,清晰的虹膜(尽管检测到疾病),3)的几何失真虹膜,4)扭曲的虹膜组织和5)阻碍虹膜组织。那么三种不同的虹膜识别方法(MIRLIN,VeriEye和OSIRIS)来找到健康的眼睛,那些由疾病影响计算的平均真实和冒名顶替者比较成绩的差异。具体而言,与一组健康的眼睛,你有什么影响错误不匹配率的高电位的时候,我们得到了所有的虹膜匹配器和所有受疾病影响的眼睛显著恶化真正的比较分数。

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