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Vessel centerlines extraction from Fundus Fluorescein Angiogram based on Hessian analysis of directional curvelet subbands

机译:基于方向性Curvelet子带的Hessian分析,从眼底荧光血管造影术中提取血管中心线

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This paper presents a novel algorithm for automatic extraction of the blood vessels centerline in Fundus Fluorescein Angiography (FFA) images in different diabetic retinopathy (DR) stages. First, the background normalized images are enhanced by applying a morphological edge detector. Then each of the directional images resulting from curvelet sub-bands is individually processed using Hessian matrix and first order derivative of the directional images information in a multi-scale framework for extracting initial centerline segments. Every resulted candidate segment in previous step is confirmed or rejected based on the length and intensity features and eigenvalues analysis. The final vessels centerline segmentation is obtained by connecting the images subsets in a binary image. The proposed algorithm is tested on 70 FFA images from different DR stages and the performance of method in terms of true positive ratio (TPR) and false positive ratio (FPR) that are obtained .9017 and .0983 respectively.
机译:本文提出了一种新的算法,可以自动提取糖尿病性视网膜病变(DR)不同阶段的眼底荧光血管造影(FFA)图像中的血管中心线。首先,通过应用形态学边缘检测器来增强背景归一化图像。然后,在多尺度框架中使用Hessian矩阵和方向图信息的一阶导数,分别处理从Curvelet子带得到的每个方向图,以提取初始中心线段。根据长度和强度特征以及特征值分析,确认或拒绝上一步中的每个结果候选片段。通过将二进制图像中的图像子集连接起来,可获得最终的血管中心线分割。该算法在来自不同DR阶段的70张FFA图像上进行了测试,并根据分别获得的.9017和.0983的真正比率(TPR)和假正比率(FPR)对方法的性能进行了测试。

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