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Blood Vessel Extraction in Color Retinal Fundus Images with Enhancement Filtering and Unsupervised Classification

机译:具有增强过滤和无监督分类的彩色视网膜眼底图像中的血管提取

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Retinal blood vessels have a significant role in the diagnosis and treatment of various retinal diseases such as diabetic retinopathy, glaucoma, arteriosclerosis, and hypertension. For this reason, retinal vasculature extraction is important in order to help specialists for the diagnosis and treatment of systematic diseases. In this paper, a novel approach is developed to extract retinal blood vessel network. Our method comprises four stages: (1) preprocessing stage in order to prepare dataset for segmentation; (2) an enhancement procedure including Gabor, Frangi, and Gauss filters obtained separately before a top-hat transform; (3) a hard and soft clustering stage which includes K-means and Fuzzy C-means (FCM) in order to get binary vessel map; and (4) a postprocessing step which removes falsely segmented isolated regions. The method is tested on color retinal images obtained from STARE and DRIVE databases which are available online. As a result, Gabor filter followed by K-means clustering method achieves 95.94% and 95.71% of accuracy for STARE and DRIVE databases, respectively, which are acceptable for diagnosis systems.
机译:视网膜血管在各种视网膜疾病例如糖尿病性视网膜病,青光眼,动脉硬化和高血压中的诊断和治疗中具有重要作用。因此,视网膜脉管系统摘除对帮助专家诊断和治疗系统性疾病很重要。在本文中,开发了一种新颖的方法来提取视网膜血管网络。我们的方法包括四个阶段:(1)预处理阶段,以准备用于分割的数据集; (2)增强程序,包括在礼帽变换之前分别获得的Gabor,Frangi和Gauss滤波器; (3)硬聚类和软聚类阶段,包括K-均值和Fuzzy C-均值(FCM),以获取二元血管图; (4)后处理步骤,去除错误分割的孤立区域。该方法在从STARE和DRIVE数据库获得的彩色视网膜图像上进行了测试,这些图像可在线获得。结果,采用Gabor滤波和K-means聚类方法的STARE数据库和DRIVE数据库的精度分别达到95.94%和95.71%,这对于诊断系统是可以接受的。

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