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Different Averages of a Fuzzy Set With an Application to Vessel Segmentation

机译:模糊集的不同平均值及其在血管分割中的应用

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Image segmentation is a major problem in image processing, particularly in medical image analysis. A great number of segmentation procedures produce intermediate gray-scale images that can be understood as fuzzy sets. Additionally, some segmentation procedures tend to leave free tuning parameters (very influential in the final binary image) for the user. These different binary images can be easily aggregated (into a fuzzy set) by making use of fuzzy set theory. In any case, a single binary image is required so our interest is to associate a crisp set to a given fuzzy set in an intelligent and unsupervised manner. The main idea of this paper is to define the averages of a given fuzzy set by using different definitions of the mean of a random compact set. In particular, the average distance of Baddeley-Molchanov and the mean of Vorob'ev have been used. A theoretical study of some new definitions of fuzzy set averages has been performed. In particular, these averages have been obtained for L - R fuzzy numbers. Finally, we present a medical image application, that of retinal vessel detection. Some recent segmentation procedures have been revisited and modified using these new averages. The experimental results are very promising.
机译:图像分割是图像处理中的主要问题,特别是在医学图像分析中。大量的分割过程会产生可被理解为模糊集的中间灰度图像。另外,一些分割过程倾向于给用户留下自由调整参数(在最终的二进制图像中非常有影响)。通过使用模糊集理论,可以轻松地将这些不同的二进制图像聚合(成为模糊集)。在任何情况下,都只需要一个二进制图像,因此我们的兴趣是以智能和无监督的方式将清晰集与给定模糊集相关联。本文的主要思想是通过使用随机紧凑集平均值的不同定义来定义给定模糊集的平均值。特别是,使用了Baddeley-Molchanov的平均距离和Vorob'ev的平均值。对模糊集平均数的一些新定义进行了理论研究。特别地,已经获得了LR模糊数的这些平均值。最后,我们提出了医学图像应用程序,即视网膜血管检测。使用这些新的平均值重新审视和修改了一些最近的分割过程。实验结果很有希望。

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