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Information Processing & Management
Volume 42, Issue 2, March 2006, Pages 484-502
 
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doi:10.1016/j.ipm.2005.01.007    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2005 Elsevier Ltd All rights reserved.

XMage: An image retrieval method based on partial similarity

Chang-Ryong KimCorresponding Author Contact Information, E-mail The Corresponding Author and Chin-Wan Chung

Division of Computer Science, Department of Electrical Engineering and Computer Science, Korea Advanced Institute of Science and Technology, 373-1, Kusong-dong, Yusong-gu, Taejon 305-701, South Korea

Received 4 June 2004; 
accepted 5 January 2005. 
Available online 17 March 2005.

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Abstract

XMage is introduced in this paper as a method for partial similarity searching in image databases. Region-based image retrieval is a method of retrieving partially similar images. It has been proposed as a way to accurately process queries in an image database. In region-based image retrieval, region matching is indispensable for computing the partial similarity between two images because the query processing is based upon regions instead of the entire image. A naive method of region matching is a sequential comparison between regions, which causes severe overhead and deteriorates the performance of query processing. In this paper, a new image contents representation, called Condensed eXtended Histogram (CXHistogram), is presented in conjunction with a well-defined distance function CXSim() on the CX-Histogram. The CXSim() is a new image-to-image similarity measure to compute the partial similarity between two images. It achieves the effect of comparing regions of two images by simply comparing the two images. The CXSim() reduces query space by pruning irrelevant images, and it is used as a filtering function before sequential scanning. Extensive experiments were performed on real image data to evaluate XMage. It provides a significant pruning of irrelevant images with no false dismissals. As a consequence, it achieves up to 5.9-fold speed-up in search over the R*-tree search followed by sequential scanning.

Keywords: Image-to-image similarity measure; Region-based retrieval; Histogram intersection; Filtering function

Article Outline

1. Introduction
2. Related work
3. Partial similarity model
3.1. Problem definition
3.2. Partial similarity based on histogram intersection
3.3. CXHistogram and CXSim()
4. XMage query processing()
5. Experimental results
5.1. Effectiveness of CXSim()
5.2. Efficiency of the proposed method, XMage
6. Conclusions and future works
Acknowledgements
References












 
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