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Automatic estimation of clusters number for K-means

机译:自动估计K均值的簇数

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At the present time, clustering algorithms are popular analysis tools in image segmentation. For instance, the K-means is one of the most used algorithms in the literature and it is fast, robust and easier to understand and to implement but, the main drawback of the K-means algorithm is that the number of clusters must be known a priori and must be supplied as an input parameter. This paper discusses the problem of the estimation of the number of clusters for image segmentation and proposes a new approach which is based on histogram to find a suitable number of K (the number of clusters). Experimental results demonstrate the effectiveness of our method to estimate the correct number of clusters which reflect a good separation of objects for each image.
机译:目前,聚类算法是图像分割中流行的分析工具。例如,K均值是文献中最常用的算法之一,它快速,健壮且易于理解和实施,但是K均值算法的主要缺点是必须知道簇的数量先验的,并且必须作为输入参数提供。本文讨论了估计用于图像分割的簇数的问题,并提出了一种新的基于直方图的方法来找到合适的K数(簇数)。实验结果表明,我们的方法可以有效地估算出正确的聚类数量,这些聚类反映了每个图像的良好对象分离效果。

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