Implementation of the Hough Transform for Iris Detection and Segmentation

Francisco Javier Paulín-Martínez, A. Lara-Guevara, R. Romero-González, Hugo Jiménez-Hernández
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引用次数: 3

Abstract

The iris is used as a reference for the study of unique biometric marks in people. The analysis of how to extract the iris characteristic information represents a fundamental challenge in image analysis, due to the implications it presents: detection of relevant information, data coding schemes, etc. For this reason, in the search for extraction of useful and characteristic information, approximations have been proposed for its analysis. In this article, it is presented a scheme to extract the relevant information based on the Hough transform. This transform helps to find primitive geometries in the irises, which are used to characterize each one of these. The results of the implementation of the algorithm of the Hough transform applied to the location and segmentation of the iris by means of its circumference are presented in the paper. Two public databases of iris images were used: UBIRIS V2 and CASIA-IrisV4, which were acquired under the same conditions and controlled environments. In the pre-processing stage the edges are found from the noise elimination in the image through the Canny detector. Subsequently, to the images of the detected edges, the Hough transform is applied to the disposition of the geometries detected.
Hough变换在虹膜检测和分割中的实现
虹膜被用作研究人类独特生物特征标记的参考。如何提取虹膜特征信息的分析代表了图像分析中的一个基本挑战,因为它所带来的含义:相关信息的检测、数据编码方案等。因此,在寻找有用和特征信息的提取过程中,已经提出了对其分析的近似值。本文提出了一种基于霍夫变换提取相关信息的方案。这种变换有助于在虹膜中找到原始几何体,这些几何体用于表征每一个虹膜。本文给出了Hough变换算法在虹膜周长定位和分割中的应用结果。使用了两个虹膜图像的公共数据库:UBIRIS V2和CASIA-IrisV4,它们是在相同的条件和受控环境下采集的。在预处理阶段,通过Canny检测器从图像中的噪声消除中找到边缘。随后,对于检测到的边缘的图像,将霍夫变换应用于检测到的几何形状的布置。
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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