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Research papers

A content-based image retrieval system based on object-moment feature

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Pages 415-422 | Received 09 Dec 2012, Accepted 13 Jun 2014, Published online: 27 Jun 2014
 

Abstract

The last decade has witnessed great interest in research on content-based image retrieval (CBIR). In 2009, Lin et al. proposed a smart CBIR system based on colour and texture feature. Their system has a high detection rate except the cases where image objects have similar shapes. To enhance the detection rate a shape-based image feature called object-moment is proposed in this paper. Object-moment uses the moment of force to compute the object edge feature by calculating the distance from each edge pixel to the axis, and adding them up as a feature. Besides, we integrate the colour features (NSOM, CSOM) and the texture features (CCM, DBPSP) to enhance image detection rate and simplify computation of image retrieval. A series of analyses and comparisons are performed in our experiments to demonstrate that our proposed method improves the retrieval accuracy significantly.

Acknowledgements

This work was supported in part by National Science Council under the grants NSC 99-2410-H-025-010-MY2 and NSC 101-2410-H-025 -009 -MY2.

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