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Finger vein segmentation in infrared images using supervised and unsupervised clustering algorithms

机译:使用监督和非监督聚类算法对红外图像中的手指静脉进行分割

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摘要

In this paper, two new methods to segment infrared images of finger in order to perform the finger vein pattern extraction task are presented. In the first, the widespread known and used K nearest neighbor (KNN) classifier, which is a very effective supervised method for clustering data sets, is used. In the second, a novel clustering algorithm named nearest neighbor clustering algorithm (NNCA), which is unsupervised and has been recently proposed for retinal vessel segmentation, is used. As feature vectors for the classification process in both cases two features are used: the multidirectional response of a matched filter and the minimum eigenvalue of the Hessian matrix. The response of the multidirectional filter is essential for robust classification because offers a distinction between vein-like and edge-like structures while Hessian based approaches cannot offer this. The two algorithms, as the experimental results show, perform well with the NNCA has the advantage that is unsupervised and thus can be used for full automatic finger vein pattern extraction. It is also worth to note that the proposed vector, composed only of two features, is the simplest feature set which has proposed in the literature until now and results in a performance comparable with others that use a vector with much larger size (31 features). NNCA evaluated also quantitatively on a database which contains artificial images of finger and achieved the segmentation rates: 0.88 sensitivity, 0.80 specificity and 0.82 accuracy.
机译:本文提出了两种新的分割手指红外图像的方法,以完成手指静脉图案的提取任务。首先,使用了广泛使用的已知K最近邻(KNN)分类器,这是一种非常有效的用于对数据集进行聚类的监督方法。第二,使用一种新的聚类算法,称为最近邻聚类算法(NNCA),该算法不受监督,最近已提出用于视网膜血管分割的方法。在这两种情况下,都将两个特征用作分类过程的特征向量:匹配滤波器的多向响应和Hessian矩阵的最小特征值。多方向滤波器的响应对于鲁棒分类至关重要,因为它区分了静脉状结构和边缘状结构,而基于Hessian的方法则无法做到这一点。如实验结果所示,这两种算法在NNCA上表现良好,具有不受监督的优势,因此可用于全自动手指静脉图案提取。还应注意,仅由两个特征组成的拟议向量是迄今为止文献中提出的最简单的特征集,其性能可与使用更大尺寸的向量的其他特征相媲美(31个特征) 。 NNCA在包含手指的人造图像的数据库上也进行了定量评估,实现了分割率:0.88灵敏度,0.80特异性和0.82准确性。

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