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PatternQuest: learning patterns of interest using relevance feedback in multimedia information retrieval
2004 IEEE International Conference on Multimedia and Expo (ICME) (IEEE Cat. No.04TH8763)
In this paper, we present a PatternQuest framework to learn the patterns of interest (i.e., the distribution patterns of positive objects) using classification methods and relevance feedback. To improve the performance of multimedia retrieval, our PatternQuest first employs an efficient feature selection method to extract a low-dimensional feature subspace. With the feature selection, PatternQuest can effectively alleviate the curse of dimensionality for learning-based relevance feedback. To
doi:10.1109/icme.2004.1394175
fatcat:unairnhi4jdh3o447knkt4cbfa