Shape and texture clustering: Best estimate for the clusters number

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摘要

The most difficult problem in automatic clustering is the determination of the total number of final clusters Ncluster. In the present paper, a new method for finding Ncluster is proposed and is compared with previously developed methods. The proposed method is based on the minimization of the functional θ(Ncluster)=αNcluster+β∑iNcluster1ni+1Ncluster∑i=1Nclusterdist(Ci) where ni is the number of shapes and textures in cluster Ci, dist(Ci) is the intra-cluster distance and α and β are two parameters controlling the grain of the clustering. The proposed method provides almost perfect clustering for the Kimia-25, Kimia-99, MPEG-7 shape databases, subset of Brodatz, full Brodatz and UIUCTex texture databases and provides better results than all previously proposed methods for automatic clustering.

论文关键词:Shape and texture clustering,Number of clusters,Symbolic representation,Shape context,Dynamic programming,Edit distance,SIFT

论文评审过程:Received 8 February 2008, Revised 20 January 2009, Accepted 8 April 2009, Available online 16 April 2009.

论文官网地址:https://doi.org/10.1016/j.imavis.2009.04.002