Content-based image retrieval using growing hierarchical self-organizing quadtree map

Pattern Recognition(2005)

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摘要
In this paper, a growing hierarchical self-organizing quadtree map (GHSOQM) is proposed and used for a content-based image retrieval (CBIR) system. The incorporation of GHSOQM in a CBIR system organizes images in a hierarchical structure. The retrieval time by GHSOQM is less than that by using direct image comparison using a flat structure. Furthermore, the ability of incremental learning enables GHSOQM to be a prospective neural-network-based approach for CBIR systems. We also propose feature matrices, image distance and relevance feedback for region-based images in the GHSOQM-based CBIR system. Experimental results strongly demonstrate the effectiveness of the proposed system.
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关键词
region-based image,image distance,ghsoqm-based cbir system,content-based image retrieval,hierarchical self-organizing quadtree map,flat structure,direct image comparison,proposed system,cbir system,cbir system organizes image,neural network,self organization
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