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A new relevance feedback technique for iconic image retrieval based on spatial relationships
Authors:Peng-Yeng Yin [Author Vitae]  Chin-Wen Liu [Author Vitae]
Affiliation:Department of Information Management, National Chi-Nan University, Nantou 54561, Taiwan
Abstract:Due to the popularity of Internet and the growing demand of image access, the volume of image databases is exploding. Hence, we need a more efficient and effective image searching technology. Relevance feedback technique has been popularly used with content-based image retrieval (CBIR) to improve the precision performance, however, it has never been used with the retrieval systems based on spatial relationships. Hence, we propose a new relevance feedback framework to deal with spatial relationships represented by a specific data structure, called the 2D Be-string. The notions of relevance estimation and query reformulation are embodied in our method to exploit the relevance knowledge. The irrelevance information is collected in an irrelevant set to rule out undesired pictures and to expedite the convergence speed of relevance feedback. Our system not only handles picture-based relevance feedback, but also deals with region-based feedback mechanism, such that the efficacy and effectiveness of our retrieval system are both satisfactory.
Keywords:2D String  Longest common subsequence  Shortest common supersequence  Relevance feedback
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