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An novel image segmentation framework by cooperative learning and evolutionary two-objective kernel clustering

机译:一种基于协同学习和进化两目标核聚类的新颖图像分割框架

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This paper aims to present two novel techniques in synthetic aperture radar (SAR) image segmentation by cooperative competition, cooperative learning and evolutionary multi-objective clustering in kernel mapping thereof. First, we introduce an efficient implementation of cooperative/competition evolution by using two parallel implemented populations, which are divided by the Pareto domination and local density information. Second, two conflicting fuzzy clustering validity indices are incorporated into this framework and optimized in kernel distance measure simultaneously and. Finally, the proposed algorithm is tested on two complicated SAR images. Compared with four other state-of-the-art algorithms and our method achieve comparable results in terms of convergence, diversity metrics, and computational time.
机译:本文旨在通过合作竞争,合作学习和核映射中的进化多目标聚类提出两种合成孔径雷达(SAR)图像分割的新技术。首先,我们通过使用两个并行实现的种群(由帕累托支配力和局部密度信息划分)来介绍合作/竞争进化的有效实现。其次,将两个相互矛盾的模糊聚类有效性指标纳入该框架,并同时在核距离测量中进行了优化。最后,该算法在两个复杂的SAR图像上进行了测试。与其他四种最先进的算法相比,我们的方法在收敛性,多样性指标和计算时间方面均达到了可比的结果。

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