预测虹膜分割失败的自动方法

N. Kalka, Nick Bartlow, B. Cukic
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引用次数: 24

摘要

虹膜识别系统中最重要的任务是定位感兴趣的虹膜区域,这一过程被称为虹膜分割。研究发现,分割结果是影响虹膜识别匹配性能的主要因素。这项工作提出了基于概率强度特征和几何特征的技术,以达到表明瞳孔和虹膜分割成功的分数。该技术是全自动的,因此不需要人工监督或人工评估。本文还提出了一种利用瞳孔和虹膜分数来预测虹膜分割结果的机器学习方法。我们使用两种不同性能的虹膜分割算法在两个公开可用的虹膜数据集上测试了这些技术。我们的分析表明,该方法能够达到分割分数适合预测瞳孔或虹膜分割的成功和失败。在预测整体分割结果时,所提出的机器学习方法在四种算法和数据集的组合中实现了98.45%的平均分类准确率。最后,我们提出了一种特定于虹膜匹配分数性能的技术的潜在应用,并概述了该算法的许多其他潜在用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automated method for predicting iris segmentation failures
Arguably the most important task in iris recognition systems involves localization of the iris region of interest, a process known as iris segmentation. Research has found that segmentation results are a dominant factor that drives iris recognition matching performance. This work proposes techniques based on probabilistic intensity features and geometric features to arrive at scores indicating the success of both pupil and iris segmentation. The technique is fully automated and therefore requires no human supervision or manual evaluation. This work also presents a machine learning approach which utilizes the pupil and iris scores to arrive at an overall iris segmentation result prediction. We test the techniques using two iris segmentation algorithms of varying performance on two publicly available iris datasets. Our analysis shows that the approach is capable of arriving at segmentation scores suitable for predicting both the success and failure of pupil or iris segmentation. The proposed machine learning approach achieves an average classification accuracy of 98.45% across the four combinations of algorithms and datasets tested when predicting overall segmentation results. Finally, we present one potential application of the technique specific to iris match score performance and outline many other potential uses for the algorithm.
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