Retinal vasculature segmentation by morphological curvature, reconstruction and adapted hysteresis thresholding

M. Fraz, A. Basit, Paolo Remagnino, A. Hoppe, S. Barman
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引用次数: 13

Abstract

Automatic retinal blood vessel extraction is very important for early diagnosis and prevention of several retinal diseases. In this paper, a new retinal vasculature segmentation algorithm is proposed based on mathematical morphology, principal curvature, non-maximal suppression and hysteresis thresholding based morphological reconstruction. The blood vessels are enhanced by applying the top-hat transformation and computation of maximum principal curvature at multiple scales. Vessel centerlines are then obtained by non-maximal suppression followed by adapted hysteresis thresholding and morphological reconstruction. The principal curvature image is double thresholded and morphologically reconstructed to generate the vessel skeleton map which is the aggregate threshold for region growing of detected vessel centerlines to obtain the segmented retinal vasculature. The proposed method is evaluated using the images of two publicly available databases, the DRIVE database and the STARE database. Achieved average accuracy for DRIVE and STARE is 0.9419 and 0.9434 respectively. Experimental results show that the proposed algorithm is comparable with other approaches in accuracy, sensitivity and specificity.
基于形态曲率、重构和自适应迟滞阈值的视网膜血管分割
视网膜血管自动提取对多种视网膜疾病的早期诊断和预防具有重要意义。本文提出了一种基于数学形态学、主曲率、非极大值抑制和迟滞阈值形态学重构的视网膜血管分割算法。利用顶帽变换和多尺度最大主曲率的计算对血管进行增强。然后通过非最大抑制获得血管中心线,随后进行适应性迟滞阈值和形态重建。对主曲率图像进行双阈值和形态学重构,生成血管骨架图,该图是检测到的血管中心线区域生长的聚集阈值,从而得到分割的视网膜血管。使用两个公开可用的数据库(DRIVE数据库和STARE数据库)的图像对所提出的方法进行了评估。DRIVE和STARE的平均精度分别为0.9419和0.9434。实验结果表明,该算法在准确性、灵敏度和特异性方面与其他方法相当。
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