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Iris Localization Based on Edge Searching Strategies
引用本文:王勇 韩九强. Iris Localization Based on Edge Searching Strategies[J]. 西南交通大学学报(英文版), 2005, 13(2): 119-124
作者姓名:王勇 韩九强
作者单位:School of Electronics and Information Engineering, Xi'an Jiaotong University, Xi'an 710049, China
基金项目:The National Natural Science Foundation of China ( No. 60174030).
摘    要:An iris localization scheme based on edge searching strategies is presented. First, the edge detection operator Laplacian-of-Gaussian (LOG) is used to iris original image to search its inner boundary. Then, a circle detection operator is introduced to locate the outer boundary and its center, which is invariant of translation, rotation and scale. Finally, the method of curve fitting is developed in localization of eyelid. The performance of the proposed method is tested with 756 iris images from 108 different classes in CASIA Iris Database and compared with the conventional Hough transform method. The experimental results show that without loss of localization accuracy, the proposed iris localization algorithm is apparendy faster than Hough transform.

关 键 词:身份智能识别 安全性 信息技术 可靠性 LOG
文章编号:1005-2429(2005)02-0119-06
收稿时间:2004-12-13

Iris Localization Based on Edge Searching Strategies
Wang Yong,Han Jiuqiang. Iris Localization Based on Edge Searching Strategies[J]. Journal of Southwest Jiaotong University, 2005, 13(2): 119-124
Authors:Wang Yong  Han Jiuqiang
Abstract:An iris localization scheme based on edge searching strategies is presented. First, the edge detection operator Laplacian-of-Gaussian (LoG) is used to iris original image to search its inner boundary. Then, a circle detection operator is introduced to locate the outer boundary and its center, which is invariant of translation, rotation and scale. Finally, the method of curve fitting is developed in localization of eyelid. The performance of the proposed method is tested with 756 iris images from 108 different classes in CASIA Iris Database and compared with the conventional Hough transform method. The experimental results show that without loss of localization accuracy, the proposed iris localization algorithm is apparently faster than Hough transform.
Keywords:Iris localization   Hough transform   Edge detection
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