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Automatic detection of vascular bifurcations in segmented retinal images using trainable COSFIRE filters

机译:使用可训练的COSFIRE过滤器自动检测分割的视网膜图像中的血管分叉

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Background: The vascular tree observed in a retinal fundus image can provide clues for cardiovascular diseases. Its analysis requires the identification of vessel bifurcations and crossovers. Methods: We use a set of trainable keypoint detectors that we call Combination Of Shifted Filter REsponses or COSFIRE filters to automatically detect vascular bifurcations in segmented retinal images. We configure a set of COSFIRE filters that are selective for a number of prototype bifurcations and demonstrate that such filters can be effectively used to detect bifurcations that are similar to the prototypical ones. The automatic configuration of such a filter selects given channels of a bank of Gabor filters and determines certain blur and shift parameters. The response of a COSFIRE filter is computed as the weighted geometric mean of the blurred and shifted responses of the selected Gabor filters. The COSFIRE approach is inspired by the function of a specific type of shape-selective neuron in area V4 of visual cortex. Results: We ran experiments on three data sets and achieved the following results: (a) a recall of 97.88% at precision of 96.94% on 40 manually segmented images provided in the DRIVE data set, (b) a recall of 97.32% at precision of 96.04% on 20 manually segmented images provided in the STARE data set, and (c) a recall of 97.02% at precision of 96.53% on a set of 10 automatically segmented images obtained from images in the DRIVE data set. Conclusions: The COSFIRE filters that we use are conceptually simple and easy to implement: the filter output is computed as the weighted geometric mean of blurred and shifted Gabor filter responses. They are versatile keypoint detectors as they can be configured with any given local contour pattern and are subsequently able to detect the same and similar patterns.
机译:背景:在视网膜眼底图像中观察到的血管树可以为心血管疾病提供线索。它的分析需要识别血管的分支和交叉。方法:我们使用了一组可训练的关键点检测器,我们将其称为移位滤镜响应组合或COSFIRE滤镜组合,以自动检测分割的视网膜图像中的血管分叉。我们配置了一组对许多原型分叉具有选择性的COSFIRE过滤器,并证明了此类过滤器可有效地用于检测与原型分叉相似的分叉。这种滤波器的自动配置选择一组Gabor滤波器的给定通道,并确定某些模糊和移位参数。将COSFIRE滤波器的响应计算为所选Gabor滤波器的模糊响应和位移响应的加权几何平均值。 COSFIRE方法受视觉皮层V4区域中特定类型的形状选择神经元功能的启发。结果:我们对三个数据集进行了实验,并获得了以下结果:(a)对DRIVE数据集中提供的40张手动分割的图像以99.68%的精度调用97.88%,(b)以97.32%的精度调用在STARE数据集中提供的20幅手动分割图像上达到96.04%的回收率;以及(c)从DRIVE数据集中的10幅自动分割图像中,以96.53%的精度召回97.02%结论:我们使用的COSFIRE滤波器在概念上很简单且易于实现:滤波器的输出是作为模糊和移位的Gabor滤波器响应的加权几何平均值来计算的。它们是通用的关键点检测器,因为它们可以配置为任何给定的局部轮廓图案,并且随后能够检测相同和相似的图案。

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