Based on Wavelet Multi-Resolution Analysis of Image Retrieval and Reviewed

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Abstract:

Multimedia technology development and the implementation of the Internet technology leading to a large number of image information appear, based on keywords retrieval methods of traditional text can not meet the requirement of image information retrieval, this makes the content-based image retrieval technology gradually become the focus of research. Based on the content retrieval technology of the key step is necessary in the extraction of image features, which can be used to extract the features such as color, texture and shape. However, because of the image characteristics can only hold each image similarity of a certain aspects, therefore how to better image will be based on content said image retrieval one of the important research direction. This article reviews some content-based image retrieval comparison, such as color features and the texture characteristics and the extraction of the kind of method, each have their own advantages is in.

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Periodical:

Advanced Materials Research (Volumes 546-547)

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595-598

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Online since:

July 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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DOI: 10.1023/a:1007452223027

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