Automated Segmentation of Fluorescent and Funds Images Based on Retinal Blood Vessel

P. Sumitra, P. Ponkavitha, Saravanan K.S, S. Karthika
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Abstract

Measurements of retinal blood vessel morphology have been shown to be related to the risk of cardiovascular diseases. The wrong identification of vessels may result in a large variation of these measurements, leading to a wrong clinical diagnosis. In this paper, we address the problem of automatically identifying true vessels as a post processing step to vascular structure segmentation. We model the segmented vascular structure as a vessel segment graph and formulate the problem of identifying vessels as one of finding the optimal forest in the graph given a set of constraints. We design a method to solve this optimization problem and evaluate it on a large real-world dataset of 2,446 retinal images. Experiment results are analyzed with respect to actual measurements of vessel morphology. The results show that the proposed approach is able to achieve 98.9% pixel precision and 98.7% recall of the true vessels for clean segmented retinal images, and remains robust even when the segmented image is noisy.
基于视网膜血管的荧光和基金图像自动分割
视网膜血管形态的测量已被证明与心血管疾病的风险有关。对血管的错误识别可能导致这些测量结果的巨大变化,从而导致错误的临床诊断。在本文中,我们解决了自动识别真实血管的问题,作为血管结构分割的后处理步骤。我们将分割的血管结构建模为血管段图,并将血管识别问题表述为在给定一组约束条件的图中寻找最优森林的问题。我们设计了一种方法来解决这个优化问题,并在2446张视网膜图像的大型真实数据集上对其进行了评估。实验结果与实际测量结果进行了对比分析。实验结果表明,该方法能够达到98.9%的像素精度和98.7%的真实血管召回率,并且即使在有噪声的情况下也能保持鲁棒性。
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