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Stable Automatic Unsupervised Segmentation of Retinal Vessels Using Self-Organizing Maps and a Modified Fuzzy C-Means Clustering

机译:使用自组织映射和改进的模糊C均值聚类对视网膜血管进行稳定的自动无监督分割

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In this paper an automatic unsupervised method for the segmentation of retinal vessels is proposed. Three features are extracted from the tested image. The features are scaled down by a factor of 2 and mapped into a Self-Organizing Map. A modified Fuzzy C-Means clustering algorithm is used to divide the neuron units of the map in 2 classes. The entire image is again input for the Self-Organizing Map and the class of each pixel will be the class of its best matching unit in the Self-Organizing Map. Finally, the vessel network is post-processed using a hill climbing strategy on the connected components of the segmented image.The experimental evaluation on the DRIVE database shows accurate extraction of vessels network and a good agreement between our segmentation and the ground truth. The mean accuracy, 0.9482 with a standard deviation of 0.0075, is outperforming the manual segmentation rates obtained by other widely used unsupervised methods. A good kappa value of 0.6565 is comparable with state-of-the-art supervised or unsupervised approaches.
机译:本文提出了一种自动无监督的视网膜血管分割方法。从测试图像中提取三个特征。要素将缩小2倍,并映射到自组织地图中。改进的模糊C均值聚类算法用于将地图的神经元单元分为2类。再次将整个图像输入到“自组织图”中,每个像素的类别将是其在“自组织图”中最佳匹配单位的类别。最后,利用爬山策略对分割后的图像中的相连部分进行后处理,对DRIVE数据库进行的实验评估表明,该方法可以准确提取出血管网络,并且可以将分割结果与地面真实情况很好地吻合。平均准确度为0.9482,标准偏差为0.0075,优于通过其他广泛使用的无监督方法获得的手动分割率。良好的kappa值为0.6565,可以与最新的监督或无监督方法相媲美。

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