一种新的虹膜识别方法

Rocky Yefrenes Dillak, Martini Ganantowe Bintiri
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引用次数: 2

摘要

虹膜是一种非常稳定可靠的生物识别技术。本研究旨在利用CASIA-v4-Syn(非理想虹膜)的420幅虹膜图像和CASIA-v1(理想虹膜)的378幅虹膜图像,开发一种可用于虹膜识别的方法。该方法的基本原理如下:首先,利用阿米巴中值滤波和高斯滤波设计预处理,以增强虹膜的有效面积;其次,利用改进的CHT方法对虹膜区域进行分割,使虹膜与瞳孔分离;随后,利用均质橡胶板模型从分割的虹膜中提取内、下区域的交点,进行ROI的选择过程,将虹膜变换为矩形形状,用于特征提取。然后使用多个3D-GLCM提取特征特征,即最大概率、相关性、对比度、能量、均匀性和熵;这是二维GLCM的高级版本。最后,使用Elman递归神经网络/Levenberg-Marquardt算法对这些特征进行训练以获得准确率。研究表明,该方法使用CASIA-Iris-Syn v4的识别率可达91%,使用CASIA-Iris-Syn v1的识别率可达94.22%,可以满足虹膜识别的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach for iris recognition
Iris is one of the biometrics that is very stable and reliable. This research aims to develop a method that can be used to perform iris identification using four hundred and twenty iris images from CASIA-v4-Syn (non-ideal iris) along with three hundred and seventy eight iris images from CASIA-v1 (ideal iris). The basic principle of the proposed method as follows: firstly, design the preprocess using amoeba median filter and Gaussian filter in order to enhance the effective area of the iris. Secondly, using modified CHT method, the iris area is segmented to separate the iris from the pupil. Subsequently, the selection process of ROI by applying homogeneous rubber sheet model to extract the intersection of internal and lower region from the segmented iris will consequently transform it to a rectangular shape which will be used for features extraction. The characteristic features namely maximum probability, correlation, contrast, energy, homogeneity, and entropy are then extracted using multiple 3D-GLCM; which is the advanced version of 2D GLCM. Finally, these features are trained using Elman Recurrent Neural Network/Levenberg-Marquardt algorithm to obtain the accuracy. Studies have shown that the recognition rates of this method can reach CRR of 91% using CASIA-Iris-Syn v4 and CRR of 94.22% using CASIA-Iris-Syn v1 which can meet the demand of iris recognition.
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