Unsupervised image categorization

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摘要

Large image collections require efficient organization and visualization. This paper describes an approach to establish image categories automatically by unsupervised learning. The method works free of context and previous knowledge: in a first stage, features are formed automatically, then images are clustered to form categories. The human database designer has to decide only whether a category is useful or too inhomogeneous from a high level point of view. To collect images that cannot be categorized automatically, an additional ‘miscellaneous’ category exists. Categories are visualized by displaying the most typical image(s) of the categories as thumbnails. The main benefit of the approach is that it deals with color and shape in a unified way on a local scale, combined with the advantages of histogram techniques on the global scale. To judge results, an evaluation scheme which is adequate for the task of categorization is proposed.

论文关键词:Image categorization,Image retrieval,Image indexing,Salient points,Interest points,Object recognition,Unsupervised learning,Vector quantization,Color features

论文评审过程:Received 29 January 2004, Revised 5 May 2005, Accepted 5 May 2005, Available online 1 July 2005.

论文官网地址:https://doi.org/10.1016/j.imavis.2005.05.016