Methodology for iris segmentation and recognition using multi-resolution transform

J. Sekar, S. Arivazhagan, R. Murugan
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引用次数: 4

Abstract

Iris segmentation is used to locate the valid part of the iris for iris biometrics which is an essential module in iris recognition because it defines the effective image region used for subsequent processing such as feature extraction and iris identification. A novel algorithm for efficient and accurate iris segmentation is carried out in this system. The pupil boundary is detected by applying the equation of circle by finding three points on its circumference. The reflection within the pupil region (if any) is filled by reducing the radius of the pupil one by one until it reaches to zero. Then calculating the edge points of iris boundaries (left, right, upper and lower) point by taking the fixed value from pupil circumference. The novelty here for eyelids localization can be performed by using ‘3 points marking’ for upper lid and ‘edge detector’ for lower lid. After that, eyelash removal can be done by Order — Statistic Filtering. Finally, the accurate iris edge region is fitted by calculating the point of intersection between eyelids and eye localization. After edge fitting, the curvelet transform is applied for feature extraction. The Manhattan and Euclidean Distance measures are used to measure the similarity between two images to find the best match. Here, the challenging benchmark database MMU is used for identification and verification.
基于多分辨率变换的虹膜分割与识别方法
虹膜分割用于虹膜生物识别中虹膜有效部分的定位,是虹膜识别中必不可少的一个模块,它定义了虹膜特征提取和虹膜识别等后续处理的有效图像区域。该系统提出了一种高效、准确的虹膜分割算法。利用圆方程在瞳孔的周长上找到三个点,从而检测瞳孔的边界。瞳孔区域内的反射(如果有的话)是通过一个接一个地缩小瞳孔的半径直到它达到零来填充的。然后从瞳孔周长取固定值计算虹膜边界的左、右、上、下点边缘点。眼睑定位的新颖之处可以通过上眼睑的“三点标记”和下眼睑的“边缘检测器”来实现。然后用顺序统计过滤法去除睫毛。最后,通过计算眼睑交点和眼部定位,拟合出准确的虹膜边缘区域。边缘拟合后,采用曲波变换进行特征提取。曼哈顿和欧几里得距离度量用于度量两个图像之间的相似性,以找到最佳匹配。在这里,使用具有挑战性的基准数据库MMU进行识别和验证。
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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