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Retinal vessel segmentation under pathological conditions using supervised machine learning

机译:使用监督机器学习在病理条件下进行视网膜血管分割

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In this paper we present an automated blood vessel segmentation system algorithm for the retinal images under pathological conditions like Diabetic Retinopathy (DR) using matched filters and supervised classification techniques. Matched filter has been extensively used in the enhancement and segmentation of the retinal blood vessels due to the cross sectional similarity of the vessels to the Gaussian profile. However in addition to the vessel edges the non vessel edges also gives a strong response to the matched filter leading to false detection. Based on the structural and spatial differences between the segmented vessels and the non vessels components, we propose a classification technique using machine learning approach to mask out the false detection due to non vessel structures. The proposed method shows an increased accuracy than the state of the art matched filter techniques especially in the case of vessel segmentation from pathologically affected retinal images.
机译:在本文中,我们提出了使用匹配过滤器和监督分类技术对诸如糖尿病性视网膜病变(DR)等病理条件下视网膜图像的自动血管分割系统算法。由于血管与高斯轮廓的横截面相似性,匹配过滤器已广泛用于视网膜血管的增强和分割。但是,除了血管边缘,非血管边缘也对匹配的过滤器产生强烈响应,从而导致错误检测。基于分段血管和非血管成分之间的结构和空间差异,我们提出了一种使用机器学习方法的分类技术,以掩盖由于非血管结构导致的错误检测。所提出的方法显示出比现有技术的匹配滤波器技术更高的准确性,尤其是在从病理学上影响的视网膜图像进行血管分割的情况下。

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