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Weight selection in W-K-means algorithm with an application in color image segmentation

机译:W-K-means算法中的权重选择及其在彩色图像分割中的应用

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摘要

In this paper, a weight selection procedure in the W-k-means algorithm is proposed based on the statistical variation viewpoint. This approach can solve the W-k-means algorithm's problem that the clustering quality is greatly affected by the initial value of weight. After the statistics of data, the weights of data are designed to provide more information for the character of W-k-means algorithm so as to improve the precision. Furthermore, the corresponding computational complexity is analyzed as well. We compare the clustering results of the W-k-means algorithm with the different initialization methods. Results from color image segmentation illustrate that the proposed procedure produces better segmentation than the random initialization according to Liu and Yang's (1994) evaluation function.
机译:本文基于统计变化观点,提出了一种W-k-means算法中的权重选择过程。该方法可以解决W-k-means算法的聚类质量受权重初始值影响较大的问题。在对数据进行统计后,对数据的权重进行设计,为W-k-means算法的特征提供更多的信息,以提高精度。此外,还分析了相应的计算复杂度。我们将W-k-means算法的聚类结果与不同的初始化方法进行了比较。彩色图像分割的结果表明,根据Liu和Yang(1994)的评估函数,所提出的程序比随机初始化产生的分割效果更好。

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