Efficient iris recognition system based on dual boundary detection using robust variable learning rate Multilayer Feed Forward neural network

Mohtashim Baqar, Sohaib Azhar, Zeeshan Iqbal, Irfan Shakeel, Laeeq Ahmed, M. Moinuddin
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引用次数: 12

Abstract

This paper presents a novel approach towards iris recognition based on dual boundary (Pupil-Iris & Sclera-Iris) detection and then using a modified Multilayer Feed Forward neural network (MFNN) to perform an efficient automatic classification. The novelty of the work resides in the fact that the proposed method features the localization of the dual iris boundaries to be used as feature vector for classification. The process of information extraction starts by preprocessing the eye-image to remove specular highlight and then locating the pupil of the eye by using edge detection. The centroid of the detected pupil is chosen as the reference point for extracting the boundary points. The boundary points are recorded using radius vector functions approach. The proposed feature vector is obtained by concatenating the contour points of the Pupil-Iris boundary and the Sclera-Iris boundary which will yield a unique pattern named as Iris signature. The proposed method is translational and scale invariant. The classification is performed using the MFNN via a modified version of back-propagation algorithm which uses a time varying learning rate. The proposed system has been tested on moderate no of pictures taken from MMU iris database in the presence of additive noise for different values of signal-to-noise ratio (SNR). Experimental result for percentage recognition shows that the proposed method outperforms the single boundary method.
基于鲁棒变学习率多层前馈神经网络的双边界检测虹膜识别系统
本文提出了一种基于双边界(瞳孔-虹膜和巩膜-虹膜)检测的虹膜识别新方法,然后利用改进的多层前馈神经网络(MFNN)进行有效的自动分类。该方法的新颖之处在于利用双虹膜边界的定位作为特征向量进行分类。信息提取过程首先对人眼图像进行预处理,去除镜面高光,然后利用边缘检测对瞳孔进行定位。选取检测到的瞳孔质心作为提取边界点的参考点。采用半径矢量函数法记录边界点。通过连接瞳孔-虹膜边界和巩膜-虹膜边界的轮廓点来获得所提出的特征向量,这将产生一个独特的模式,称为虹膜签名。该方法具有平移性和尺度不变性。使用MFNN通过使用时变学习率的反向传播算法的改进版本进行分类。在不同信噪比(SNR)值下,对MMU虹膜数据库中存在加性噪声的中等数量图像进行了测试。百分比识别实验结果表明,该方法优于单边界方法。
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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