改进分割算法并进一步优化虹膜识别

A. Uka, Albana Roci, Oktay Koç
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引用次数: 10

摘要

虹膜识别是一种生物特征认证系统,对确保安全至关重要,并已被用作测试模式识别中开发的算法的重要案例。虹膜独特的圆形形状及其时不变性使其成为一种通用的技术,其精度可以用数学方法证明。本文提出了一种新的分割技术和两种新的编码方案。在两个著名的数据库(CASIA和IIT Delhi数据库)的最佳、最差和所有鸢尾上进行了测试,并将结果与经典分割和经典编码方案进行了比较。改进了分割方法,提高了分割的准确率和平均错误率。在CASIA数据库中,使用新的分割方法将EER从3.14%提高到0.82%(对数据集的所有756张图像)。在整个IIT虹膜数据库上进行测试,EER由3.88%提高到0.34%;在最差的IIT图像上,EER从13.30%提高到1.00%。
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Improved segmentation algorithm and further optimization for iris recognition
Iris recognition is a biometric authentication system proving vital for ensuring security and has been employed as an important case to test the algorithms developed in pattern recognition. The unique circular shape of the iris and its time invariance makes it a versatile technique that has an accuracy that can be mathematically proven. Here in this work we propose a new segmentation technique and two new encoding schemes. The newly proposed techniques are tested on the best, the worst and on all the irises of two widely known databases (CASIA and IIT Delhi database) and the results are compared with the classical segmentation and classical encoding schemes. The segmentation is improved and as a result the accuracy and equal error rate also. In CASIA database the use of the new segmentation improves the EER from 3.14% to 0.82% (on all 756 images of the dataset). When tested on the whole IIT iris database, the EER is improved from 3.88% to 0.34%; and on the worst images of IIT EER is improved from 13.30% to 1.00%.
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