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A novel brain image segmentation using intuitionistic fuzzy C means algorithm

机译:基于直觉模糊C均值算法的新型脑图像分割

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摘要

A process of splitting the image into pixel bands is the image segmentation. As medical imaging contain uncertainties, there are difficulties in classification of images into homogeneous regions. There is a need for segmentation algorithm for removing the noise from the medical image segmentation. The very popular algorithm is Fuzzy C-Means (FCM) algorithm used for image segmentation. Fuzzy sets, rough sets, and the combination of fuzzy and rough sets play a prominent role in formalizing uncertainty, vagueness, and incompleteness in diagnosis. But it will use intensity values only which will be highly sensitive to noise. In this article, an Intuitionistic FCM (IFCM) algorithm is presented for clustering. Intuitionistic fuzzy (IF) sets are generalized sets and their elements are characterized by a membership value as well as nonmembership value. This IFCM has an uncertainty parameter which is called hesitation degree and a new objective function is integrated in the standard FCM based on IF entropy. The IFCM will provide better performance than FCM for image segmentation.
机译:将图像分为像素带的过程就是图像分割。由于医学成像包含不确定性,因此难以将图像分类为均匀区域。需要用于从医学图像分割中去除噪声的分割算法。非常流行的算法是用于图像分割的模糊C均值(FCM)算法。模糊集,粗糙集以及模糊和粗糙集的组合在形式化诊断中的不确定性,模糊性和不完整性方面发挥着重要作用。但是它将仅使用对噪声高度敏感的强度值。在本文中,提出了一种用于群集的直觉FCM(IFCM)算法。直觉模糊(IF)集是广义集,其元素具有隶属度值和非隶属度值的特征。该IFCM具有称为犹豫度的不确定性参数,并且基于IF熵在标准FCM中集成了新的目标函数。对于图像分割,IFCM将提供比FCM更好的性能。

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