首页> 外文会议>Conference on Remotely Sensed Data and Information; 20070525-27; Nanjing(CN) >Cloud model based fuzzy C-means clustering and its application
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Cloud model based fuzzy C-means clustering and its application

机译:基于云模型的模糊C均值聚类及其应用

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The Algorithm of Fuzzy C-Means (FCM) clustering is used in many fields, such as data mining, image segmentation etc. But it has the problem of cluster center initialization. Good initial cluster centers will constrain the value function to the overall situation optimal solution rapidly, and inappropriate initial cluster centers, not only need more iterative times, but also may possibly cause the algorithm finally restrained to the partial optimal solution. Aim to resolve the problem of cluster center initialization, the paper proposes a new approach of FCM based on cloud model which is an efficient transformation model between quantitative number and qualitative concept, and applied it in the field of image segmentation, the experiment results prove the method can define good initial cluster centers and produce good quality of image segmentation.
机译:模糊C-均值(FCM)聚类算法被用于许多领域,例如数据挖掘,图像分割等。但是它存在聚类中心初始化的问题。好的初始聚类中心会迅速将价值函数约束到全局最优解,而不合适的初始聚类中心不仅需要更多的迭代时间,而且可能会导致算法最终局限于局部最优解。为了解决聚类中心初始化问题,提出了一种基于云模型的FCM新方法,该方法是定量和定性概念之间的有效转换模型,并将其应用于图像分割领域,实验结果证明了该方法的有效性。该方法可以定义良好的初始聚类中心,并产生良好的图像分割质量。

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