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Total Bregman divergence-based fuzzy local information C-means clustering for robust image segmentation

机译:总基于BREGMAS分歧的模糊本地信息C-MEARE群集用于鲁棒图像分割

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摘要

The fuzzy local information C-means clustering algorithm (FLICM) is an important robust fuzzy clustering segmentation method, which has attracted considerable attention over the years. However, it lacks certain robustness to high noise or severe outliers. To improve the accuracy and robustness of the FLICM algorithm for images corrupted by high noise, a novel fuzzy local information c-means clustering utilizing total Bregman divergence (TFLICM) is proposed in this paper. The total Bregman divergence is modified by the local neighborhood information of sample to further enhance the ability to suppress noise, and then modified total Bregman divergence is introduced into the FLICM to construct a new objective function of robust fuzzy clustering, and the iterative clustering algorithm with high robustness is obtained through optimization theory. The convergence of the TFLICM algorithm is proved by the Zangwill theorem. In addition, the validity of the TFLICM algorithm applied in noise image segmentation is explained by means of sample weighting fuzzy clustering. Meanwhile, the generalized total Bregman divergence unifies the Bregman divergence with the total Bregman divergence and enhances the universality of the TFLICM algorithm applied in segmenting complex medical and remote sensing images. Some experimental results show that the TFLICM algorithm can obtain better segmentation quality and stronger anti-noise robustness than the existing FLICM algorithm. (C) 2020 Elsevier B.V. All rights reserved.
机译:模糊本地信息C-Means聚类算法(FLICM)是一种重要的强大模糊聚类分割方法,这些分割方法在多年来引起了相当大的关注。但是,它对高噪音或严重异常值缺乏某些稳健性。为了提高由高噪声损坏的图像损坏的FLICM算法的准确性和稳健性,本文提出了一种新的模糊本地信息C-MEARE集群利用总BREGMAN发散(TFLICM)。通过样本的本地邻域信息来修改总Bregman分歧,以进一步增强抑制噪声的能力,然后将修改的总Bregman发散引入FLICM以构建鲁棒模糊聚类的新客观函数,以及迭代聚类算法通过优化理论获得高稳健性。 Zangwill定理证明了TFLICM算法的收敛。另外,通过样本加权模糊聚类解释噪声图像分割中应用于噪声图像分割的TFLICM算法的有效性。同时,广义的总Bregman分歧统一促使Bregman发散的差异性偏差,增强了在分段复杂的医疗和遥感图像中应用的TFLICM算法的普遍性。一些实验结果表明,TFLICM算法可以获得比现有的FLICM算法更好的分割质量和更强的抗噪声鲁棒性。 (c)2020 Elsevier B.V.保留所有权利。

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