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Retinal image analysis aimed at extraction of vascular structure using linear discriminant classifier

机译:使用线性判别分级器提取血管结构的视网膜图像分析

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Automatic segmentation of the retinal vasculature is considered as a first step in computer assisted medical applications related to diagnosis and treatment planning. This paper describes a pixel classification based method of segmenting retinal blood vessels using linear discriminant analysis. The vessel-ness measure of a pixel is defined by the feature vector comprised of a modified multiscale line operator and Gabor filter responses. The sequential forward feature selection scheme is used to identify the optimal scales for the line operator and Gabor filter. The linear discriminant classifier utilizes only two features for pixel classification. The feature vector encodes information to reliably handle normal vessels in addition to vessels with strong light reflexes along their centerline, which is more apparent on retinal arteriolars than venules. The method is evaluated on the three publicly available DRIVE, STARE and MESSIDOR datasets. The method is computationally fast and its performance approximates the 2nd human observer as well as other existing methodologies available in the literature, thus making it a suitable tool for automated retinal image analysis.
机译:视网膜脉管系统的自动分割被认为是与诊断和治疗计划有关的计算机辅助医疗应用的第一步。本文描述了一种基于像素分类的基于像素分类方法,其使用线性判别分析分割视网膜血管。像素的血管-NESS测量由由修改的多尺度线路运算符和Gabor滤波器响应组成的特征向量来定义。顺序前进特征选择方案用于识别线路运算符和Gabor滤波器的最佳尺度。线性判别分类器仅利用两个特征进行像素分类。特征向量除了沿其中心线的血管外,特征向量可以可靠地处理正常容器,除了具有强烈的光反射的血管,这在视网膜动脉杆菌上比venules更加明显。该方法在三个公共可用的驱动器,凝视和Messidor数据集上进行评估。该方法的计算快速,其性能近似于文献中的2 Nd 人类观察者以及其他现有方法,从而使其成为自动视网膜图像分析的合适工具。

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