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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Single point iterative weighted fuzzy C-means clustering algorithm for remote sensing image segmentation
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Single point iterative weighted fuzzy C-means clustering algorithm for remote sensing image segmentation

机译:遥感影像分割的单点迭代加权模糊C均值聚类算法

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摘要

In this paper, a remote sensing image segmentation procedure that utilizes a single point iterative weighted fuzzy C-means clustering algorithm is proposed based upon the prior information. This method can solve the fuzzy C-means algorithm's problem that the clustering quality is greatly affected by the data distributing and the stochastic initializing the centrals of clustering. After the probability statistics of original data, the weights of data attribute are designed to adjust original samples to the uniform distribution, and added in the process of cyclic iteration, which could be suitable for the character of fuzzy C-means algorithm so as to improve the precision. Furthermore, appropriate initial clustering centers adjacent to the actual final clustering centers can be found by the Proposed single point adjustment method, which Could promote the convergence speed of the overall iterative process and drastically reduce the calculation time. Otherwise, the modified algorithm is updated from multidimensional data analysis to color images clustering. Moreover, with the comparison experiments of the UCI data sets, public Berkeley segmentation dataset and the actual remote sensing data, the real validity of proposed algorithm is proved.
机译:在此基础上,提出了一种基于单点迭代加权模糊C均值聚类算法的遥感图像分割方法。该方法可以解决模糊C-均值算法的问题,即数据的分布和聚类中心的随机初始化会极大地影响聚类的质量。在对原始数据进行概率统计后,对数据属性的权重进行设计,使原始样本调整为均匀分布,并在循环迭代的过程中增加权重,这可能适合模糊C-均值算法的特点,从而进行改进。精度。此外,通过建议的单点调整方法可以找到与实际最终聚类中心相邻的合适的初始聚类中心,这可以提高整个迭代过程的收敛速度,并大大减少计算时间。否则,将修改后的算法从多维数据分析更新为彩色图像聚类。通过UCI数据集,公共伯克利分割数据集和实际遥感数据的对比实验,证明了该算法的真实有效性。

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