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SAR Image Segmentation Based on Improved Grey Wolf Optimization Algorithm and Fuzzy C-Means

机译:基于改进的灰狼优化算法的SAR图像分割和模糊C型方法

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An improved Grey Wolf Optimization (GWO) algorithm with differential evolution (DEGWO) combined with fuzzy C-means for complex synthetic aperture radar (SAR) image segmentation was proposed for the disadvantages of traditional optimization and fuzzy C-means (FCM) in image segmentation precision. In the process of image segmentation based on FCM algorithm, the number of clusters and initial centers estimation is regarded as a search procedure that searches for an appropriate value in a greyscale interval. Hence, an improved differential evolution Grey Wolf Optimization (DE-GWO) algorithm is introduced to search for the optimal initial centers; then the image segmentation approach which bases its principle on FCM algorithm will get a better result. Experimental results in this work infers that both the precision and efficiency of the proposed method are superior to those of the state of the art.
机译:提出了一种改进的灰狼优化(GWO)算法(DEGWO)与复杂的合成孔径雷达(SAR)图像分割的模糊C型算法组合用于图像分割中传统优化和模糊C型(FCM)的缺点 精确。 在基于FCM算法的图像分割过程中,群集数和初始中心估计被认为是在灰度间隔中搜索适当值的搜索过程。 因此,引入了改进的差分演进灰狼优化(DE-GWO)算法以搜索最佳初始中心; 然后基于FCM算法基础原理的图像分割方法将获得更好的结果。 这项工作中的实验结果是所提出的方法的精度和效率均优于现有技术的精度和效率。

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