Iris recognition with a database of iris images obtained in visible light using smartphone camera

Mateusz Trokielewicz
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引用次数: 19

Abstract

This paper delivers a new database of iris images collected in visible light using a mobile phone's camera and presents results of experiments involving existing commercial and open-source iris recognition methods, namely: Iri-Core, VeriEye, MIRLIN and OSIRIS. Several important observations are made. First, we manage to show that after simple preprocessing, such images offer good visibility of iris texture even in heavily-pigmented irides. Second, for all four methods, the enrollment stage is not much affected by the fact that different type of data is used as input. This translates to zero or close-to-zero Failure To Enroll, i.e., cases when templates could not be extracted from the samples. Third, we achieved good matching accuracy, with correct genuine match rate exceeding 94.5% for all four methods, while simultaneously being able to maintain zero false match rate in every case. Correct genuine match rate of over 99.5% was achieved using one of the commercial methods, showing that such images can be used with the existing biometric solutions with minimum additional effort required. Finally, the experiments revealed that incorrect image segmentation is the most prevalent cause of recognition accuracy decrease. To our best knowledge, this is the first database of iris images captured using a mobile device, in which image quality exceeds this of a near-infrared illuminated iris images, as defined in ISO/IEC 19794-6 and 29794-6 documents. This database will be publicly available to all researchers.
虹膜识别,使用智能手机相机在可见光下获得虹膜图像数据库
本文提供了一个利用手机摄像头在可见光下采集虹膜图像的新数据库,并介绍了现有商用和开源虹膜识别方法的实验结果,即:iris - core、VeriEye、MIRLIN和OSIRIS。提出了几个重要的观察结果。首先,我们设法证明,经过简单的预处理,这些图像即使在高色素虹膜中也能提供良好的虹膜纹理可见性。其次,对于所有四种方法,登记阶段不太受使用不同类型的数据作为输入的影响。这转化为零或接近于零的注册失败,即无法从样本中提取模板的情况。第三,我们取得了良好的匹配精度,四种方法的正确率均超过94.5%,同时在每种情况下都能保持零误匹配率。使用其中一种商业方法获得了超过99.5%的正确真实匹配率,表明这些图像可以与现有的生物识别解决方案一起使用,所需的额外努力最少。最后,实验表明,错误的图像分割是导致识别精度下降的最主要原因。据我们所知,这是第一个使用移动设备捕获的虹膜图像数据库,其中图像质量超过了ISO/IEC 19794-6和29794-6文档中定义的近红外照明虹膜图像。该数据库将对所有研究人员公开开放。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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