Retinal blood vessel segmentation by support vector machine classification

Eva Tuba, Lazar Mrkela, M. Tuba
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引用次数: 32

Abstract

Medical diagnostics has been significantly improved by introduction of digital imagery, primarily because of the powerful digital image processing tools. Digital retinal images are used for diagnostics of various diseases including diabetes, hypertension, stroke, etc. Retinal blood vessels are crucial for such diagnostics so segmentation of retinal blood vessels is an important and active research area. In this paper we propose an overlapping-block-based algorithm for retinal blood vessels segmentation based on classification by support vector machine using chromaticity and DCT coefficients as features. The proposed algorithm was tested on standard benchmark retinal images from the DRIVE data set. Results were compared with available ground truth images and other approaches from literature and vessel segmentation was excellent in all cases.
支持向量机分类视网膜血管分割
数字图像的引入大大改善了医学诊断,这主要是因为强大的数字图像处理工具。数字视网膜图像用于各种疾病的诊断,包括糖尿病、高血压、中风等。视网膜血管是此类诊断的关键,因此视网膜血管的分割是一个重要而活跃的研究领域。本文提出了一种基于重叠块的支持向量机分类视网膜血管分割算法,该算法以色度和DCT系数为特征。在DRIVE数据集的标准基准视网膜图像上对该算法进行了测试。结果与现有的地面真实图像和文献中的其他方法进行了比较,血管分割在所有情况下都很出色。
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