Toward a higher-level visual representation for content-based image retrieval

被引:0
|
作者
Ismail El sayad
Jean Martinet
Thierry Urruty
Chabane Djeraba
机构
[1] University of Lille 1,LIFL/CNRS
来源
关键词
SURF; Content-based image retrieval; Visual words; Visual phrases; Gaussian mixture model; Spatial weighting; pLSA;
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学科分类号
摘要
Having effective methods to access the desired images is essential nowadays with the availability of a huge amount of digital images. The proposed approach is based on an analogy between content-based image retrieval and text retrieval. The aim of the approach is to build a meaningful mid-level representation of images to be used later on for matching between a query image and other images in the desired database. The approach is based firstly on constructing different visual words using local patch extraction and fusion of descriptors. Secondly, we introduce a new method using multilayer pLSA to eliminate the noisiest words generated by the vocabulary building process. Thirdly, a new spatial weighting scheme is introduced that consists of weighting visual words according to the probability of each visual word to belong to each of the n Gaussian. Finally, we construct visual phrases from groups of visual words that are involved in strong association rules. Experimental results show that our approach outperforms the results of traditional image retrieval techniques.
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页码:455 / 482
页数:27
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