使用同义词库建模基于键块的图像检索

Lei Zhu, Chun Tang, A. Rao, A. Zhang
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引用次数: 20

摘要

Keyblock是我们提出的基于内容的图像检索框架,是基于文本的信息检索技术在图像领域的推广。在该框架中,可以利用向量量化(VQ)方法构造类似于文本文档检索中的关键字块。然后可以将图像表示为键块列表,类似于可以将文本文档视为关键字列表。基于这种图像表示,可以构建各种特征模型来支持图像检索。本文提出了一种新的特征表示模型,利用键块-键块相关矩阵(keyblock-thesaurus)来方便图像检索。该模型的特征向量考虑了键块之间的关联效应,能够更有效地表示图像内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using thesaurus to model keyblock-based image retrieval
Keyblock, which is a new framework we proposed for content-based image retrieval, is a generalization of the textbased information retrieval technology in the image domain. In this framework, keyblocks, which are analogous to keywords in text document retrieval, can be constructed by exploiting the method of Vector Quantization (VQ). Then an image can be represented as a list of keyblocks similar to a text document which can be considered as a list of keywords. Based on this image representation, various feature models can be constructed for supporting image retrieval. In this paper, we present a new feature representation model which use the keyblock-keyblock correlation matrix, termed keyblock-thesaurus, to facilitate the image retrieval. The feature vectors of this new model incorporate the effect of correlation between keyblocks, thus being more effective in representing image content.
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