Iris recognition based on grouping KNN and Rectangle Conversion

Hui Zhang, Xiang-feng Guan
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引用次数: 8

Abstract

In iris recognition, as a large amount of experiments show, the inner edge of iris is not a standard circle, thus edges may cause the error of accurate recognition. If we use traditional localization method of round template, it can cause the problem of iris legacy, the loss of iris textures and longer time as well. To improve the accuracy of iris location, reduce the recognition time, this paper develops a new iris recognition algorithm. Firstly, the lights pot within the pupil is filled in the original image, then the image is unfolded into a rectangle and the circle detection is substituted by the point and line detection in the rectangle image to find the inner and outer edge, secondly, texture features are extracted by EMD. Thirdly, the K nearest neighbors (KNN) of each test sample are found based on distance of Mahalanibis. Lastly, recognition results are decided by majority voting method. The recognition accuracy of simulation experiments based on CASIA iris image database amounts to 99% and has the less running time. The results show that compared to circle template, Rectangle Conversion has more accurate location of the iris, thus effectively raising the recognition accuracy.
基于分组KNN和矩形变换的虹膜识别
在虹膜识别中,大量的实验表明,虹膜的内缘不是一个标准的圆,因此边缘可能会导致准确识别的误差。如果采用传统的圆形模板定位方法,会造成虹膜遗留、虹膜纹理丢失、定位时间长等问题。为了提高虹膜定位的准确性,减少识别时间,本文开发了一种新的虹膜识别算法。首先在原始图像中填充瞳孔内的光斑,然后将图像展开为矩形图像,用矩形图像中的点线检测代替圆检测来寻找内边缘和外边缘,然后通过EMD提取纹理特征。第三,根据马氏体的距离找到每个测试样本的K个近邻(KNN)。最后,采用多数投票法确定识别结果。基于CASIA虹膜图像数据库的仿真实验识别准确率达99%,且运行时间短。结果表明,与圆形模板相比,矩形转换具有更精确的虹膜定位,从而有效地提高了识别精度。
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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