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Segmentation of retinal blood vessels using the radial projection and semi-supervised approach

机译:使用径向投影和半监督方法分割视网膜血管

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摘要

Automatic segmentation of retinal blood vessels has become a necessary diagnostic procedure in ophthalmology. The blood vessels consist of two types of vessels, i.e., thin vessels and wide vessels. Therefore, a segmentation method may require two different processes to treat different vessels. However, traditional segmentation algorithms hardly draw a distinction between thin and wide vessels, but deal with them together. The major problems of these methods are as follows: (1) If more emphasis is placed on the extraction of thin vessels, the wide vessels tend to be over detected; and more artificial vessels are generated, too. (2) If more attention is paid on the wide vessels, the thin and low contrast vessels are likely to be missing. To overcome these problems, a novel scheme of extracting the retinal vessels based on the radial projection and semi-supervised method is presented in this paper. The radial projection method is used to locate the vessel centerlines which include the low-contrast and narrow vessels. Further, we modify the steerable complex wavelet to provide better capability of enhancing vessels under different scales, and construct the vector feature to represent the vessel pixel by line strength. Then, semi-supervised self-training is used for extraction of the major structures of vessels. The final segmentation is obtained by the union of the two types of vessels. Our approach is tested on two publicly available databases. Experiment results show that the method can achieve improved detection of thin vessels and decrease false detection of vessels in pathological regions compared to rival solutions.
机译:视网膜血管的自动分割已成为眼科的必要诊断程序。血管由两种类型的血管组成,即,细血管和宽血管。因此,分割方法可能需要两个不同的过程来处理不同的血管。但是,传统的分割算法很难区分细血管和细血管,而是将它们一起处理。这些方法的主要问题如下:(1)如果更着重于细血管的提取,则宽血管容易被过度检测;也产生了更多的人造血管。 (2)如果对宽血管给予更多关注,则可能会缺少薄而低对比度的血管。为了克服这些问题,提出了一种基于径向投影和半监督方法的视网膜血管提取新方案。径向投影法用于定位包括低对比度和狭窄血管的血管中心线。此外,我们修改了可控复杂小波,以提供更好的在不同尺度下增强血管的能力,并构造了矢量特征以线强度表示血管像素。然后,使用半监督自训练来提取血管的主要结构。最终的分割是通过将两种类型的血管合并而获得的。我们的方法在两个公共数据库上进行了测试。实验结果表明,与竞争对手的解决方案相比,该方法可以改善薄血管的检测,并减少对病理区域血管的错误检测。

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