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Retinal blood vessel localization approach based on bee colony swarm optimization, fuzzy c-means and pattern search

机译:基于蜂群优化,模糊c均值和模式搜索的视网膜血管定位方法

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Accurate segmentation of retinal blood vessels is an important task in computer aided diagnosis and surgery planning of retinopathy. Despite the high resolution of photographs in fundus photography, the contrast between the blood vessels and retinal background tends to be poor. Furthermore, pathological changes of the retinal vessel tree can be observed in a variety of diseases such as diabetes and glaucoma. Vessels with small diameters are much liable to effects of diseases and imaging problems. In this paper, an automated retinal blood vessels segmentation approach based on two levels optimization principles is proposed. The proposed approach makes use of the artificial bee colony optimization in conjunction with fuzzy cluster compactness fitness function with partial belongness in the first level to find coarse vessels. The dependency on the vessel reflectance is problematic as the confusion with background and vessel distortions especially for thin vessels, so we made use of a second level of optimization. In the second level of optimization, pattern search is further used to enhance the segmentation results using shape description as a complementary feature. Thinness ratio is used as a fitness function for the pattern search optimization. The pattern search is a powerful tool for local search while artificial bee colony is a global search with high convergence speed. The proposed retinal blood vessels segmentation approach is tested on two publicly available databases DRIVE and STARE of retinal images. The results demonstrate that the performance of the proposed approach is comparable with state of the art techniques in terms of sensitivity, specificity and accuracy. (C) 2015 Elsevier Inc. All rights reserved.
机译:视网膜血管的准确分割是视网膜病变的计算机辅助诊断和手术计划中的重要任务。尽管眼底摄影中的照片分辨率很高,但是血管和视网膜背景之间的对比度往往很差。此外,可以在诸如糖尿病和青光眼的多种疾病中观察到视网膜血管树的病理变化。小直径的船只很容易受到疾病和影像问题的影响。本文提出了一种基于两级优化原理的视网膜视网膜血管自动分割方法。所提出的方法利用人工蜂群优化与第一级具有部分归属的模糊聚类紧致度适应度函数相结合来找到粗血管。对血管反射率的依赖性是一个问题,因为背景和血管畸变会造成混淆,尤其是对于细血管,因此我们利用了第二级优化。在第二级优化中,使用形状描述作为补充特征,进一步使用模式搜索来增强分割结果。稀薄率用作模式搜索优化的适应度函数。模式搜索是进行局部搜索的有力工具,而人工蜂群则是具有高收敛速度的全局搜索。在两个公众可获取的视网膜图像数据库DRIVE和STARE上测试了建议的视网膜血管分割方法。结果表明,在敏感性,特异性和准确性方面,所提出方法的性能可与最新技术相媲美。 (C)2015 Elsevier Inc.保留所有权利。

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