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Image segmentation using spatial fuzzy C means clustering and grey wolf optimizer

机译:使用空间模糊C均值聚类和灰狼优化器进行图像分割

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Image segmentation is one research area of image processing which has many applications in practice. In this paper we have undertaken image segmentation problem using spatial fuzzy c means (SFCM) clustering which is an unsupervised classification scheme. A good segmentation result is desirable for classification problem especially in medical image classification. Therefore SFCM clustering result is further optimized using a new colony based optimization algorithm called the grey wolf optimizer (GWO). Experiments were conducted for segmentation of magnetic resonance imaging (MRI) images. Comparative results are presented to show the effectiveness of incorporating GWO in to SFCM for image segmentation problem. Performance parameters are given in terms of clustering validity functions.
机译:图像分割是图像处理的研究领域之一,在实践中有很多应用。在本文中,我们使用空间模糊c均值(SFCM)聚类进行了图像分割问题,这是一种无监督的分类方案。对于分类问题,尤其是在医学图像分类中,期望良好的分割结果。因此,使用称为灰狼优化器(GWO)的新的基于集落的优化算法,可以进一步优化SFCM聚类结果。进行了磁共振成像(MRI)图像分割的实验。提出了比较结果,以显示将GWO合并到SFCM中以解决图像分割问题的有效性。性能参数是根据聚类有效性函数给出的。

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