虹膜识别系统中基于神经的迭代虹膜检测方法

R. D. Labati, V. Piuri, F. Scotti
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引用次数: 18

摘要

在文献中,虹膜边界的检测被认为是虹膜识别系统识别任务中最关键的步骤之一。本文提出了一种利用神经网络迭代检测虹膜中心和边界的方法。该算法从输入图像的一个初始随机点开始,然后在感兴趣的圆形区域内处理一组局部图像属性,搜索虹膜边界的特殊过渡模式。经过训练的神经网络处理与提取的边界相关的参数,并估计相对于估计的中心在垂直和水平轴上的偏移量。然后用处理后的偏移量更新起点的坐标。然后,这些步骤迭代固定数量的时代,产生瞳孔中心及其边界坐标的迭代细化。实验结果表明,该方法是可行的,即使在虹膜识别生物特征系统的非理想工作条件下也能被利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural-based iterative approach for iris detection in iris recognition systems
The detection of the iris boundaries is considered in the literature as one of the most critical steps in the identification task of the iris recognition systems. In this paper we present an iterative approach to the detection of the iris center and boundaries by using neural networks. The proposed algorithm starts by an initial random point in the input image, then it processes a set of local image properties in a circular region of interest searching for the peculiar transition patterns of the iris boundaries. A trained neural network processes the parameters associated to the extracted boundaries and it estimates the offsets in the vertical and horizontal axis with respect to the estimated center. The coordinates of the starting point are then updated with the processed offsets. The steps are then iterated for a fixed number of epochs, producing an iterative refinements of the coordinates of the pupils center and its boundaries. Experiments showed that the method is feasible and it can be exploited even in non-ideal operative condition of iris recognition biometric systems.
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