Computer Engineering

Dynamic weight image retrieval method based on self-feedback

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  • 1.Information Service and Documents Administration Department, China Aero-Polytechnology Establishment, Beijing 100028;
    2.Research Center for Knowledge Engineering, Shenyang Aerospace University, Shenyang 110136;3.Composite Search Department, Baidu, Beijing 100085

Received date: 2013-10-09

Abstract

Image retrieval based on single feature has already been quite mature.How to use these single features effectively is the key to the image retrieval.In this paper, we apply dynamic weight to multi-featured process to achieve retrieval by combining the single features such as color, texture and shape with the feedback technology.Experimental results show that the algorithm using dynamic weight can accurately and efficiently retrieve the target image.

Cite this article

I Wei, ZHOU Qiao-li, GAO Hui, LANG Wen-jing . Dynamic weight image retrieval method based on self-feedback[J]. Journal of Shenyang Aerospace University, 2013 , 30(6) : 34 -37 . DOI: 10.3969/j.issn.2095-1248.2013.06.008

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