A new approach for iris segmentation

Jinyu Zuo, N. Ratha, J. Connell
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引用次数: 45

Abstract

Iris segmentation is an important first step for high accuracy iris recognition. A robust iris segmentation procedure should be able to handle noise, occlusion and non-uniform lighting. It also impacts system accuracy - high FAR or FRR values may come directly from bad or wrong segmentations. In this paper a simple new approach for iris segmentation is proposed that tries to integrate quality evaluation ideas directly into the segmentation algorithm. By cutting out all the bad areas, the fraction of the iris that remains can be used as a comprehensive quality measure. This eliminates images with high occlusion (e.g. by the eyelids) as well as images with other quality problems (e.g. low contrast), all using the same mechanism. The proposed method has been tested on a medium-sized (450 image) public database (MMU1) and the score distribution investigated. We also show that, as expected, overall matching accuracy can be improved by rejecting images which have a low quality assessment, thus validating the utility of this measure.
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一种新的虹膜分割方法
虹膜分割是实现高精度虹膜识别的重要步骤。一个健壮的虹膜分割程序应该能够处理噪声,遮挡和不均匀照明。它还会影响系统的准确性-高FAR或FRR值可能直接来自错误或错误的分割。本文提出了一种简单的虹膜分割新方法,尝试将质量评价思想直接融入到分割算法中。通过切除所有坏的区域,虹膜的剩余部分可以作为一个综合的质量衡量标准。这消除了高遮挡的图像(例如眼睑)以及具有其他质量问题的图像(例如低对比度),所有这些都使用相同的机制。该方法已在一个中型(450张图像)公共数据库(MMU1)上进行了测试,并研究了得分分布。我们还表明,正如预期的那样,通过拒绝具有低质量评估的图像可以提高总体匹配精度,从而验证了该措施的实用性。
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