BALAS: Empirical Bayesian learning in the relevance feedback for image retrieval

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This paper is on user relevance for image retrieval. We take this problem as a standard two-class pattern classification problem aiming at refining the retrieval precision by learning through the user relevance feedback data. However, we have investigated the problem by noting two important unique characteristics of the problem: small sample collection and asymmetric sample distributions between positive and negative samples. We have developed a novel approach to empirical Bayesian learning to solve for this problem by explicitly exploiting the two unique characteristics, which is the methodology of Bayesian Learning in Asymmetric and Small sample collections, thus called BALAS. In BALAS different learning strategies are used for positive and negative sample collections, respectively, based on the two unique characteristics. By defining the relevancy confidence as the relevant posterior probability, we have developed an integrated ranking scheme in BALAS, which complementarily combines the subjective relevancy confidence and the objective similarity measure to capture the overall retrieval semantics. The experimental evaluations have confirmed the rationale of the proposed ranking scheme, and have also demonstrated that BALAS is superior to an existing relevance feedback method in the current literature in capturing the overall retrieval semantics.

论文关键词:CBIR,Relevance feedback,Bayesian learning,Relevancy confidence,Session semantic distance

论文评审过程:Received 6 September 2004, Revised 14 August 2005, Accepted 14 November 2005, Available online 19 January 2006.

论文官网地址:https://doi.org/10.1016/j.imavis.2005.11.004