Multi-unit iris biometric fusion using gray level co-occurrence matrix features

S. A. Banday, A. H. Mir, F. Khursheed
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引用次数: 5

Abstract

Iris offers an excellent recognition performance when used as a biometric. This is because no two irises are alike, not between identical twins, or even between the left and right eye of the same individual. Irises are also stable; unlike other identifying characteristics that can change with age, the pattern and textural details of a individual's iris is fully formed by ten months of age and remains the same for the duration of his lifetime. This paper proposes multi-unit biometric fusion recognition system. In this paper we have fused matching scores from left and right iris of a person using the gray level co-occurrence matrix (GLCM) for textural feature extraction. From the proposed fusion framework there has been significant improvement in the performance compared to Unimodal iris recognition system. The proposed fusion method has been tested using CASIA-iris-V4 thousand database.
基于灰度共现矩阵特征的多单元虹膜生物特征融合
虹膜作为一种生物识别技术,具有优异的识别性能。这是因为没有两个虹膜是相同的,同卵双胞胎之间没有,甚至同一个人的左右眼之间也没有。虹膜也很稳定;不同于其他可以随年龄变化的识别特征,虹膜的图案和纹理细节在10个月大的时候就完全形成了,并在他的一生中保持不变。提出了一种多单元生物特征融合识别系统。本文采用灰度共生矩阵(GLCM)融合人左右虹膜的匹配分数进行纹理特征提取。与单峰虹膜识别系统相比,所提出的融合框架在性能上有了显著的提高。采用CASIA-iris-V4千数据库对所提出的融合方法进行了测试。
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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