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Retinal blood vessel segmentation in high resolution fundus photographs using automated feature parameter estimation

机译:使用自动特征参数估计,高分辨率眼底照片中的视网膜血管分割

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Several ophthalmological and systemic diseases are manifested through pathological changes in the properties and the distribution of the retinal blood vessels. The characterization of such alterations requires the segmentation of the vasculature, which is a tedious and time-consuming task that is infeasible to be performed manually. Numerous attempts have been made to propose automated methods for segmenting the retinal vasculature from fundus photographs, although their application in real clinical scenarios is usually limited by their ability to deal with images taken at different resolutions. This is likely due to the large number of parameters that have to be properly calibrated according to each image scale. In this paper we propose to apply a novel strategy for automated feature parameter estimation, combined with a vessel segmentation method based on fully connected conditional random fields. The estimation model is learned by linear regression from structural properties of the images and known optimal configurations, that were previously obtained for low resolution data sets. Our experiments in high resolution images show that this approach is able to estimate appropriate configurations that are suitable for performing the segmentation task without requiring to re-engineer parameters. Furthermore, our combined approach reported state of the art performance on the benchmark data set HRF, as measured in terms of the F1-score and the Matthews correlation coefficient.
机译:几个眼科和全身性疾病是通过在属性病理变化和视网膜血管的分布表现出来。这样的改变的表征要求脉管系统,这是一种单调乏味的和耗时的任务是不可行的手动执行的分割。已经进行了许多尝试提出了从分割眼底照相视网膜血管系统自动化方法,虽然他们在临床实际应用的情况通常是由他们处理在不同分辨率下拍摄的图像的能力有限。这可能是由于大量的具有根据每个图像比例被适当地校准的参数。在本文中,我们提出申请的自动化特征参数估计的新策略,基于完全连接条件随机场的容器分割方法相结合。估算模型是通过从图像和已知的最佳配置的结构特性,以前为低分辨率的数据集获得的线性回归获知。我们在高分辨率图像的实验表明,这种方法能够推断出适用于无需重新设计参数进行分割任务适当的配置。此外,如在F1-得分和马修斯相关系数来测量我们的联合方法的报道对基准数据集HRF,本领域的性能状态。

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