Vessel centerline detection in retinal images based on a corner detector and dynamic thresholding

Ivo Soares, M. Castelo‐Branco, António M. G. Pinheiro
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引用次数: 1

Abstract

This paper describes a new method for the calculation of the retinal vessel centerlines using a scale-space approach for an increased reliability and effectiveness. The algorithm begins with a new vessel detector description method based on a modified corner detector. Then the vessel detector image is filtered with a set of binary rotating filters, resulting in enhanced vessels structures. The main vessels can be selected with a dynamic thresholding approach. In order to deal with vessels bifurcations and vessels crossovers that might not be detected, the initial retinal image is processed with a set of four directional differential operators. The resulting directional images are then combined with the detected vessels, creating the final vessels centerlines image. The performance of the algorithm is evaluated using two different datasets.
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基于角点检测器和动态阈值的视网膜图像血管中心线检测
本文描述了一种利用尺度空间方法计算视网膜血管中心线的新方法,以提高可靠性和有效性。该算法首先提出了一种新的基于改进角点检测器的血管检测器描述方法。然后用一组二元旋转滤波器对血管检测图像进行滤波,得到增强的血管结构。可以用动态阈值法选择主血管。为了处理可能无法检测到的血管分叉和血管交叉,用一组四种方向微分算子对初始视网膜图像进行处理。然后将得到的定向图像与检测到的血管相结合,形成最终的血管中心线图像。使用两个不同的数据集对算法的性能进行了评估。
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