Automated Segmentation of Retinal Blood Vessels using Fast Marching Method and local mathematical analysis

Hebatollah Alkhaddour
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Abstract

In this work, Fast Marching Method (FMM) has been suggested for Retinal blood vessels segmentation. FMM is an optimization technique; and the main advantage of the FMM is its ability to deal with branches and bifurcations without any additional computational cost. This advantage had been used in robotics to find the optimal path for the robot to move from the starting point to the goal with no collisions. Considereing the tree structure of blood vessel, I will use FMM to find the shortest bath between the optic disk and the blood vessels ends to draw the tree of the blood vessels.This method has been implemented using the M language in MATLAB R2016b. In this work local mathematical analysis has been implemented so that we can have an initial estimation of blood vessels distribution in an image in order to minimize the huge amount of noise included in retinal images and to make FMM implementing easier. FMM performance had been compared to other techniques used for retinal blood vessel detection like “Matched Filters”. The results showed that the FMM performance overcame some of those techniques and close to other high resolution methods. The FMM algorithm has been validated using the well-known “DRIVE” database and the resulting resolution ranged between 80% to 93% (depending on the noise amount in image) with iteration number between 500 to 1000 (according to the optic disk position in the image) with an average time of 0.57 seconds for each iteration which mean that the total running time is 5-10 minutes. FMM had also been validated using STARE data set and achieved a TPR of 90% for 700x605 STARE images in 15 minutes, and a TPR of 86% in 2.6 minutes when reducing image size to 350x303.
基于快速行军法和局部数学分析的视网膜血管自动分割
本文提出了快速行军法(Fast Marching Method, FMM)用于视网膜血管分割。FMM是一种优化技术;FMM的主要优点是它能够处理分支和分岔,而不需要任何额外的计算成本。这一优势已经在机器人技术中被用来寻找机器人从起点移动到目标的最优路径而不发生碰撞。考虑到血管的树形结构,我将使用FMM在视盘和血管末端之间寻找最短的浴场来绘制血管树状图。该方法已在MATLAB R2016b中使用M语言实现。在这项工作中,我们实现了局部数学分析,这样我们就可以对图像中的血管分布进行初步估计,从而最大限度地减少视网膜图像中包含的大量噪声,并使FMM的实现更容易。FMM的性能与其他用于视网膜血管检测的技术,如“匹配滤波器”进行了比较。结果表明,FMM的性能克服了这些技术的一些缺点,接近于其他高分辨率方法。FMM算法已经使用著名的“DRIVE”数据库进行了验证,得到的分辨率在80%到93%之间(取决于图像中的噪声量),迭代次数在500到1000之间(根据图像中的光盘位置),每次迭代的平均时间为0.57秒,这意味着总运行时间为5-10分钟。FMM也使用STARE数据集进行了验证,在15分钟内,700x605张STARE图像的TPR达到90%,当图像尺寸减小到350x303时,TPR在2.6分钟内达到86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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