scholarly journals Modeling User Feedback Using a Hierarchical Graphical Model for Interactive Image Retrieval

Author(s):  
Jian Guan ◽  
Guoping Qiu
Author(s):  
M. Rahmat Widyanto ◽  
◽  
Tatik Maftukhah ◽  

Fuzzy relevance feedback using Query Vector Modification (QVM) method in image retrieval is proposed. For feedback, the proposed six relevance levels are: “very relevant”, “relevant”, “few relevant”, “vague”, “not relevant”, and “very non relevant”. For computation of user feedback result, QVM method is proposed. The QVM method repeatedly reformulates the query vector through user feedback. The system derives the image similarity by computing the Euclidean distance, and computation of color parameter value by Red, Green, and Blue (RGB) color model. Five steps for fuzzy relevance feedback are: image similarity, output image, computation of membership value, feedback computation, and feedback result. Experiments used QVM method for six relevance levels. Fuzzy relevance feedback using QVM method gives higher precision value than conventional relevance feedback method. Experimental results show that the precision value improved by 28.56% and recall value improved 3.2% of conventional relevance feedback. That indicated performance Image Retrieval System can be improved by fuzzy relevance feedback using QVM method.


2013 ◽  
Vol 805-806 ◽  
pp. 1891-1894
Author(s):  
Kun Geng

Content-based image retrieval, limiting its functionality and semantics. In order to study a new method, this study, with the representative image for more information on user feedback, positive feedback framework proposes two new components called the representative image selection and label propagation. A very large image acquisition experimental result demonstrates the high electiveness positive feedback framework proposal.


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