Survey of Iris Image Segmentation and Localization

S. S. Rao, R. Shreyas, G. Maske, A. Choudhury
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引用次数: 8

Abstract

Iris recognition is one of the best methods in the biometric identification field because the iris has features that are not unique but also stay throughout the person’s lifetime. Iris recognition has multiple phases namely Image Acquisition, Iris Segmentation, Iris Localization, Feature Extraction and Matching. Image Acquisition is simply the capturing of the iris image at an optimal distance. Iris Segmentation is the process of obtaining all the different segments of the eye. Iris Localization is the process of finding inner and outer boundaries of the iris differentiating it from the sclera and pupil and mainly focusing on the iris alone. Feature extraction is the process of extracting the biometric template from the Iris, giving the unique data required for the next step. Matching is the process of finding the best match in the database for the extracted biometric template. The future implementation of this paper focuses only on the processes of Image Acquisition, Iris Segmentation and Iris Localization. The paper aims to optimise these processes in terms of image capture distance, computation time and memory requirement, using the Dynamic Reconfigurable Processor (DRP) technology along with suitable algorithms for segmentation and localization processes as described in sections 2.2 and 2.3 respectively.
虹膜图像分割与定位研究进展
虹膜识别是生物识别领域中最好的方法之一,因为虹膜的特征不是唯一的,而且会伴随人的一生。虹膜识别包括图像采集、虹膜分割、虹膜定位、特征提取和匹配等多个阶段。图像采集就是在最佳距离处捕获虹膜图像。虹膜分割是获得眼睛所有不同部分的过程。虹膜定位是寻找虹膜内外边界的过程,将其与巩膜和瞳孔区分开来,主要以虹膜为中心。特征提取是从虹膜中提取生物特征模板的过程,为下一步提供所需的唯一数据。匹配是对提取的生物特征模板在数据库中寻找最佳匹配的过程。本文的后续实现只关注图像采集、虹膜分割和虹膜定位过程。本文旨在使用动态可重构处理器(Dynamic Reconfigurable Processor, DRP)技术以及分别在2.2节和2.3节中描述的分割和定位过程的合适算法,在图像捕获距离、计算时间和内存需求方面优化这些过程。
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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