Cluster merging based on weighted mahalanobis distance with application in digital mammograph

K. Younis, M. Karim, R. Hardie, J. Loomis, S. Rogers, M. DeSimio
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引用次数: 17

Abstract

A new clustering algorithm that uses a weighted Mahdlanobis distance as a distance metric to perform partitional clustering is proposed. The covariance matrices of the generated clusters are used to determine cluster similarity and closeness so that clusters which are similar in shape and close in Mahalanobis distance can be merged together serving the ultimate goal of automatically determining the optimal number of classes present in the data. Properties of the new algorithm are presented by examining the clustering quality for codebooks designed with the proposed method and another common method that uses Euclidean distance. The new algorithm provides better results than the competing method on a variety of data sets. Application of this algorithm to the problem of detecting suspicious regions in a mammogram is discussed.
基于加权马氏距离的聚类合并在数字乳腺摄影中的应用
提出了一种利用加权Mahdlanobis距离作为距离度量进行分簇的聚类算法。生成的聚类的协方差矩阵用于确定聚类的相似度和接近度,以便将形状相似且马氏距离相近的聚类合并在一起,以自动确定数据中存在的最优类数。通过检验用该方法设计的码本的聚类质量和另一种常用的利用欧几里得距离的方法,给出了新算法的性质。在各种数据集上,新算法比竞争方法提供了更好的结果。讨论了该算法在乳房x光片可疑区域检测中的应用。
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