An efficient clustering analysis method for image segmentation with noise

P. Lin, P. Huang, A. S. Lai, Lipin Hsu, Ping Chen
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引用次数: 1

Abstract

One approach to image segmentation is to apply a data clustering method such as fuzzy c-means (FCM) to the pixels of the image. FCM and its variations all require an appropriately predefined number of clusters for a given set of data in order to obtain a correct clustering result However, an optimal number of clusters is usually unknown. Mok et al. proposed a robust adaptive clustering analysis method to identify the desired number of clusters and produce a reliable clustering solution at the same time based on a judgment matrix which represents the clustering relationship between any two data points. When applying the Mok's method to image segmentation, the method becomes very impractical because the judgment matrix is too huge to be handled efficiently. In this paper, a more efficient clustering analysis method is proposed for segmenting images with noise. The efficiency comes from the size of the judgment matrix which is only 256 by 256. Experimental results show that our method is better than Mok's method for segmenting both synthetic and real images with noise.
一种有效的含噪声图像分割聚类分析方法
图像分割的一种方法是将模糊c均值(FCM)等数据聚类方法应用于图像的像素。为了获得正确的聚类结果,FCM及其变体都需要为给定的数据集预定义适当的聚类数量,然而,最佳聚类数量通常是未知的。Mok等人提出了一种鲁棒自适应聚类分析方法,该方法基于表示任意两个数据点之间聚类关系的判断矩阵来识别所需的聚类数量,同时产生可靠的聚类解。当将Mok方法应用于图像分割时,由于判断矩阵太大而无法有效处理,该方法变得非常不实用。本文提出了一种更有效的聚类分析方法来分割带有噪声的图像。效率来自于判断矩阵的大小,它只有256 × 256。实验结果表明,该方法对含噪声的合成图像和真实图像的分割效果都优于Mok方法。
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