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Robust retinal blood vessel segmentation using hybrid active contour model

机译:使用混合主动轮廓模型进行可靠的视网膜血管分割

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摘要

In the present scenario, retinal image processing is toiling hard to get an efficient algorithm for de-noising and segmenting the blood vessel confined inside the closed curvature boundary. On this ground, this study presents a hybrid active contour model with a novel preprocessing technique to segment the retinal blood vessel in different fundus images. Contour driven black top-hat transformation and phase-based binarisation method have been implemented to preserve the edge and corner details of the vessels. In the proposed work, gradient vector flow (GVF)-based snake and balloon method are combined to achieve better accuracy over different existing active contour models. In the earlier active contour models, the snake cannot enter inside the closed curvature resulting loss of tiny blood vessels. To circumvent this problem, an inflation term F{inf Left({{rm balloon}} right)}Finf mml:mfenced close= open=balloon with GVF-based snake is incorporated together to achieve the new internal energy of snake for effective vessel segmentation. The evaluation parameters are calculated over four publically available databases: STARE, DRIVE, CHASE, and VAMPIRE. The proposed model outperforms its competitors by calculating a wide range of proven parameters to prove its robustness. The proposed method achieves an accuracy of 0.97 for DRIVE & CHASE and 0.96 for STARE & VAMPIRE datasets.
机译:在目前的情况下,视网膜图像处理辛苦地工作,以获得一种有效的算法,用于对封闭在曲率边界内的血管进行降噪和分割。在此基础上,本研究提出了一种混合主动轮廓模型,该模型具有一种新颖的预处理技术,可以分割不同眼底图像中的视网膜血管。已实施轮廓驱动的黑色礼帽变换和基于相位的二值化方法,以保留容器的边缘和角落细节。在提出的工作中,基于梯度矢量流(GVF)的蛇形和气球法相结合,可以在不同的现有活动轮廓模型上实现更好的精度。在早期的活动轮廓模型中,蛇无法进入闭合的曲率内部,从而导致微小血管的丢失。为了解决这个问题,将充气术语F {inf左({{rm气球}}右)} Finf mml:mfenced close = open = balloon与基于GVF的蛇一起使用,以实现蛇的新内部能量,从而形成有效的船只分割。评估参数是通过四个公共可用数据库计算得出的:STARE,DRIVE,CHASE和VAMPIRE。所提出的模型通过计算广泛的证明参数来证明其鲁棒性,从而胜过其竞争对手。所提出的方法对于DRIVE&CHASE的精度为0.97,对于STARE&VAMPIRE数据集的精度为0.96。

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  • 来源
    《Image Processing, IET》 |2019年第3期|440-450|共11页
  • 作者单位

    GVP Coll Engn A, Dept Elect & Commun Engn, Visakhapatnam, Andhra Pradesh, India;

    GVP Coll Engn A, Dept Elect & Commun Engn, Visakhapatnam, Andhra Pradesh, India;

    IIT Bhubaneswar, Sch Elect Sci, Bhubaneswar, Odisha, India;

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