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An unsupervised coarse-to-fine algorithm for blood vessel segmentation in fundus images

机译:一种无监督的眼底图像血管细分算法

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Algorithms for retinal vessel segmentation are powerful tools in automatic tracking systems for early detection of ophthalmological and cardiovascular diseases, and for biometric identification. In order to create more robust and reliable systems, the algorithms need to be accurately evaluated to certify their ability to emulate specific human expertise. The main contribution of this paper is an unsupervised method to detect blood vessels in fundus images using a coarse-to-fine approach. Our methodology combines Gaussian smoothing, a morphological top-hat operator, and vessel contrast enhancement for background homogenization and noise reduction. Here, statistics of spatial dependency and probability are used to coarsely approximate the vessel map with an adaptive local thresholding scheme. The coarse segmentation is then refined through curvature analysis and morphological reconstruction to reduce pixel mislabeling and better estimate the retinal vessel tree. The method was evaluated in terms of its sensitivity, specificity and balanced accuracy. Extensive experiments have been conducted on DRIVE and STARE public retinal images databases. Comparisons with state-of-the-art methods revealed that our method outperformed most recent methods in terms of sensitivity and balanced accuracy with an average of 0.7819 and 0.8702, respectively. Also, the proposed method outperformed state-of-the-art methods when evaluating only pathological images that is a more challenging task. The method achieved for this set of images an average of 0.7842 and 0.8662 for sensitivity and balanced accuracy, respectively. Visual inspection also revealed that the proposed approach effectively addressed main image distortions by reducing mislabeling of central vessel reflex regions and false-positive detection of pathological patterns. These improvements indicate the ability of the method to accurately approximate the vessel tree with reduced visual interference of pathological patterns and vessel-like structures. Therefore, our method has the potential for supporting expert systems in screening, diagnosis and treatment of ophthalmological diseases, and furthermore for personal recognition based on retinal profile matching. (C) 2017 Elsevier Ltd. All rights reserved.
机译:视网膜血管分割算法是自动跟踪系统中用于眼科和心血管疾病的早期检测以及生物特征识别的强大工具。为了创建更健壮和可靠的系统,需要对算法进行准确评估,以证明其模仿特定人类专业知识的能力。本文的主要贡献是使用粗到细方法的无监督方法来检测眼底图像中的血管。我们的方法结合了高斯平滑,形态学礼帽运算符和血管对比度增强功能,可实现背景均质化和降噪。在这里,空间依赖性和概率的统计信息用于通过自适应局部阈值方案粗略地近似船图。然后通过曲率分析和形态重建来细化粗略的分割,以减少像素标记错误并更好地估计视网膜血管树。对该方法进行了敏感性,特异性和平衡精度评估。已经在DRIVE和STARE公共视网膜图像数据库上进行了广泛的实验。与最新方法的比较表明,我们的方法在灵敏度和平衡精度方面均优于最新方法,平均值分别为0.7819和0.8702。同样,当仅评估病理图像时,所提出的方法优于最新方法,这是一项更具挑战性的任务。对于这组图像,该方法的灵敏度和平衡精度分别平均为0.7842和0.8662。目视检查还显示,所提出的方法通过减少中央血管反射区的标签错误和病理模式的假阳性检测,有效地解决了主图像失真。这些改进表明该方法能够在减少病理模式和血管样结构的视觉干扰的情况下准确估计血管树。因此,我们的方法有可能支持专家系统在眼科疾病的筛查,诊断和治疗中,并进一步基于视网膜轮廓匹配进行个人识别。 (C)2017 Elsevier Ltd.保留所有权利。

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