Title :
Image retrieval based on dynamic-state Bayesian networks
Author :
Qinkun Xiao ; Qionghai Dai ; Guihua Er
Author_Institution :
Department of Automation, Tsinghua University, Beijing, 100084, China
fDate :
July 29 2008-Aug. 1 2008
Abstract :
In this paper, a new content-based image retrieval (CBIR) methodology is proposed to overcome certain drawbacks inherited in previously proposed Bayesian network (BN)-based CBIR methods. It incorporates short-term relevance feedback learning (SRF) and long-term relevance feedback learning (LRF) methods based on dynamic-state Bayesian network (DSBN). Firstly, the multi-layers BN is constructed according to the prior knowledge. Secondly, a training phase is conducted for updating BN parameters through using the feedback information. The training cycles can be stopped until the retrieval accuracy is adequately high. The newer BN parameters are generated for conducting further image clustering in a LRF scheme. Thirdly, SRF-LRF interactive refinement is applied in order to optimize the pre-trained SRF BN parameters, leading to the improved retrieval accuracy of the whole DSBN-based CBIR scheme. Experimental results on 10,000 images demonstrate the effectiveness of the proposed methodology.
Keywords :
Image retrieval; dynamic-state Bayesian network; relevance feedback learning;
Conference_Titel :
Visual Information Engineering, 2008. VIE 2008. 5th International Conference on
Conference_Location :
Xian China
Print_ISBN :
978-0-86341-914-0