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Vessel Delineation in Retinal Images using Leung-Malik filters and Two Levels Hierarchical Learning

机译:使用Leung-Malik过滤器和两级分层学习的视网膜图像中的血管描绘

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摘要

Blood vessel segmentation is important for the analysis of ocular fundus images for diseases affecting vessel caliber, occlusion, leakage, inflammation, and proliferation. We introduce a novel supervised method to evaluate performance of Leung-Malik filters in delineating vessels. First, feature vectors are extracted for every pixel with respect to the response of Leung-Malik filters on green channel retinal images in different orientations and scales. A two level hierarchical learning framework is proposed to segment vessels in retinal images with confounding disease abnormalities. In the first level, three expert classifiers are trained to delineate 1) vessels, 2) background, and 3) retinal pathologies including abnormal pathologies such as lesions and anatomical structures such as optic disc. In the second level, a new classifier is trained to detect vessels and non-vessel pixels based on results of the expert classifiers. Qualitative evaluation shows the effectiveness of the proposed expert classifiers in modeling retinal pathologies. Quantitative results on two standard datasets STARE (AUC = 0.971, Acc=0.927) and DRIVE (AUC = 0.955, Acc =0.903) are comparable with other state-of-the-art vessel segmentation methods.
机译:血管分割对于分析眼底图像对影响血管口径,阻塞,渗漏,炎症和增殖的疾病非常重要。我们介绍了一种新颖的监督方法来评估Leung-Malik过滤器在划定血管中的性能。首先,针对Leung-Malik滤镜在不同方向和比例的绿色通道视网膜图像上的响应,为每个像素提取特征向量。提出了一种两级分层学习框架来分割视网膜图像中的血管,并混淆疾病异常。在第一级中,训练了三个专家分类器来描绘1)血管,2)背景和3)视网膜病理,包括异常病理(例如病变)和解剖结构(例如视盘)。在第二级中,训练新的分类器,以基于专家分类器的结果检测血管和非血管像素。定性评估显示了建议的专家分类器在建模视网膜病理学方面的有效性。在两个标准数据集STARE(AUC = 0.971,Acc = 0.927)和DRIVE(AUC = 0.955,Acc = 0.903)上的定量结果与其他最新的血管分割方法相当。

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