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Blood vessel extraction and optic disc removal using curvelet transform and kernel fuzzy c-means

机译:使用Curvelet变换和核模糊c均值提取血管并去除视盘

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This paper proposes an automatic blood vessel extraction method on retinal images using matched filtering in an integrated system design platform that involves curvelet transform and kernel based fuzzy c-means. Since curvelet transform represents the lines, the edges and the curvatures very well and in compact form (by less number of coefficients) compared to other multi-resolution techniques, this paper uses curvelet transform for enhancement of the retinal vasculature. Matched filtering is then used to intensify the blood vessels' response which is further employed by kernel based fuzzy c-means algorithm that extracts the vessel silhouette from the background through non-linear mapping. For pathological images, in addition to matched filtering, Laplacian of Gaussian filter is also employed to distinguish the step and the ramp like signal from that of vessel structure. To test the efficacy of the proposed method, the algorithm has also been applied to images in presence of additive white Gaussian noise where the curvelet transform has been used for image denoising. Performance is evaluated on publicly available DRIVE, STARE and DIARETDB1 databases and is compared with the large number of existing blood vessel extraction methodologies. Simulation results demonstrate that the proposed method is very much efficient in detecting the long and the thick as well as the short and the thin vessels with an average accuracy of 96.16% for the DRIVE and 97.35% for the STARE database wherein the existing methods fail to extract the tiny and the thin vessels. (C) 2016 Elsevier Ltd. All rights reserved.
机译:提出了一种在包含曲面波变换和基于核的模糊c均值的集成系统设计平台中使用匹配滤波对视网膜图像进行自动血管提取的方法。与其他多分辨率技术相比,由于curvelet变换非常好地以紧凑的形式(通过较少的系数数)很好地表示了线条,边缘和曲率,因此本文使用curvelet变换来增强视网膜血管系统。然后,使用匹配滤波来增强血管反应,基于内核的模糊c均值算法进一步采用了该算法,该算法通过非线性映射从背景中提取血管轮廓。对于病理图像,除了匹配滤波之外,还采用高斯滤波器的拉普拉斯算子来区分阶跃和斜坡样信号与血管结构的信号。为了测试所提出方法的有效性,该算法还已应用于存在加性高斯白噪声的图像,其中Curvelet变换已用于图像去噪。在公开可用的DRIVE,STARE和DIARETDB1数据库上评估性能,并将其与大量现有的血管提取方法进行比较。仿真结果表明,该方法在检测长,厚,短,细血管方面非常有效,DRIVE的平均精度为96.16%,STARE数据库的平均精度为97.35%,而现有方法无法提取细小血管。 (C)2016 Elsevier Ltd.保留所有权利。

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