新型虹膜分割识别系统

M. F. Zafar, Z. Zaheer, J. Khurshid
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引用次数: 11

摘要

虹膜纹理的丰富性和明显的稳定性使其成为一种鲁棒的个人身份认证生物特征。虹膜结构的分割精度直接影响到虹膜识别系统的性能。如果分割错误,则会提取错误的特征,从而可能导致错误的识别结果。大多数作者提出了圆形霍夫变换来定位IRIS的边界。但这种技术的问题是它的时间和内存的高消耗。它还需要一个精确的边界估计范围,如果不提供正确的估计,则无法定位IRIS。该方法采用了一种基本的方法,通过使用精细的边缘检测器来获取主边界。利用曲波变换提取特征;然后使用主成分分析来降低特征的维数。然后使用支持向量机作为分类器。识别方法的实施取得了令人鼓舞的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel iris segmentation and recognition system for human identification
The richness and apparent stability of the iris texture make it a robust biometric trait for personal authentication. The performance of an automated iris recognition system is affected by the accuracy of the segmentation process used to localize the iris structure. In case of wrong segmentation, wrong features will be extracted and hence, may lead to false identification results. Most of the authors propose Circular Hough Transform to localize the boundary of IRIS. But the problem with this technique is its high consumption of time and memory. It also requires a precise estimated range of the boundary and it fails to localize the IRIS if the correct estimation is not provided. The proposed technique follows a basic strategy and obtains the major boundaries, by using canny edge detector. Features have been extracted using Curvelets Transform; Principal Component Analysis is then used to reduce the dimension of the features. Then SVM has been used as classifier. The implementation of recognition method has shown encouraging results.
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