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Entropy-like Divergence Based Kernel Fuzzy Clustering for Robust Image Segmentation

机译:基于熵的分歧基于鲁棒图像分割的内核模糊聚类

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摘要

Gaussian kernel is defined by Euclidean distance and has been widely used in many fields. In the view of Euclidean distance is sensitive to outliers or noise and it is difficult to obtain satisfactory results for complex nonconvex data. Entropy-like divergence is firstly induced by combining Jenson-Shannon/Bregman divergence with convex function, and its mercer kernel function called entropy-like divergence-based kernel is also constructed in this paper. Secondly, a new fuzzy weighted factor based on entropy-like divergence-based kernel is proposed by improving the existing trade-off weighting factor of kernel-based fuzzy local information C-means clustering (KWFLICM). In the end, a weighted fuzzy local information clustering based on entropy-like divergence-based kernel (EKWFLICM) is presented, which combines a new weighted fuzzy factor and entropy-like divergence-based kernel. Experiment results show that the proposed algorithm outperforms the segmentation performance of existing state-of-the-art fuzzy clustering-related algorithms for the image in presence of high noise.
机译:高斯内核由欧几里德距离定义,并且已广泛用于许多领域。在欧几里德距离对异常值或噪声敏感的情况下,难以获得复杂的非渗透数据的令人满意的结果。首先通过将Jenson-Shannon / Bregman分歧与凸起功能组合来诱导熵状的分歧,并在本文中构建了称为熵状的基于分歧的内核的Mercer内核功能。其次,通过改进基于内核的模糊局部信息C-Means聚类(Kwflicm)的现有权衡权重量,提出了一种基于熵状的基于熵的基于熵的内核的新的模糊加权系数。最后,提出了一种基于熵的分歧的内核(EKWFLICM)的加权模糊局部信息聚类,其组合了新的加权模糊因子和基于熵的基于分歧的内核。实验结果表明,该算法优于存在高噪声的存在的现有最先进的模糊聚类相关算法的分割性能。

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