Clustering based Image Segmentation via Weighted Fusion of Non-local and Local Information

Li Guo, Long Chen, C. L. P. Chen, Tianjun Li, Jin Zhou
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Abstract

In this paper, we introduce a novel and effective clustering model combining the non-local and local information for the image segmentation. Recently, the non-local information has attracted much attention in the area of image processing for its excellent ability to handle the noise. Specifically, in this new model, we do an automatically weighted fusion of the non-local and local information of the image in the objective function of K-means. Thus, in the smoothing areas, the non-local information reduce the impact of noise in the region; and in the edge of regions, the local information help to keep the image details. The proposed model is a general optimization problem which can be solved by the iterative refinement technique like fuzzy c-means or K-means, and it can automatically balance the contribution of non-local and local information. Verified by the experimental results on image segmentation, the proposed model is effective to improve the performance of clustering.
基于非局部和局部信息加权融合的聚类图像分割
本文提出了一种结合非局部信息和局部信息的有效聚类模型。近年来,非局部信息以其对噪声的良好处理能力成为图像处理领域的研究热点。具体来说,在该模型中,我们在K-means目标函数中对图像的非局部信息和局部信息进行自动加权融合。因此,在平滑区域内,非局部信息减少了区域内噪声的影响;在区域边缘,局部信息有助于保持图像的细节。该模型是一个通用的优化问题,可通过模糊c-means或K-means等迭代细化技术求解,并能自动平衡非局部和局部信息的贡献。图像分割实验结果表明,该模型能有效提高聚类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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