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Iris Image Evaluation for Non-cooperative Biometric Iris Recognition System

机译:非合作式生物特征虹膜识别系统的虹膜图像评估

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摘要

During video acquisition of an automatic non-cooperative biometric iris recognition system, not all the iris images obtained from the video sequence are suitable for recognition. Hence, it is important to acquire high quality iris images and quickly identify them in order to eliminate the poor quality ones (mostly defocused images) before the subsequent processing. In this paper, we present the results of a comparative analysis of four methods for iris image quality assessment to select clear images in the video sequence. The goal is to provide a solid analytic ground to underscore the strengths and weaknesses of the most widely implemented methods for iris image quality assessment. The methods are compared based on their robustness to different types of iris images and the computational effort they require. The experiments with the built database (100 videos from MBGC v2) demonstrate that the best performance scores are generated by the kernel proposed by Kang & Park. The FAR and FRR obtained are 1.6% and 2.3% respectively.
机译:在自动非合作式生物特征虹膜识别系统的视频采集过程中,并非所有从视频序列中获得的虹膜图像都适合于识别。因此,重要的是获取高质量的虹膜图像并快速识别它们,以便在后续处理之前消除质量较差的虹膜图像(主要是散焦图像)。在本文中,我们介绍了四种用于选择视频序列中清晰图像的虹膜图像质量评估方法的比较分析结果。目的是提供一个坚实的分析基础,以强调虹膜图像质量评估最广泛实施的方法的优缺点。根据这些方法对不同类型的虹膜图像的鲁棒性和所需的计算量进行比较。使用内置数据库(来自MBGC v2的100个视频)进行的实验表明,最佳性能得分是由Kang&Park提出的内核产生的。获得的FAR和FRR分别为1.6%和2.3%。

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