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Advanced feature extraction for keyblock-based image retrieval

机译:用于基于关键块的图像检索的高级特征提取

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摘要

Keyblock, which is a new framework we proposed for content-based image retrieval, is a generalization of the text-based 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 vector quantization method which has been used for image compression. Then an image can be represented as a code matrix in which the elements are the indices of the keyblocks in a codebook. Based on this image representation, information retrieval and database analysis techniques developed in the text domain can be generalized to image retrieval. In this paper, we present new models named n-block models which are the generalization of the n-gram models in language modeling to extract comprehensive image features. The effort to capture context in a text document motivated the n-gram models. Similarly, the attempt to capture the content in an image motivates us to consider the correlations of keyblocks within an image. By comparing the performance of our approach with conventional techniques using color feature and wavelet texture feature, the experimental results demonstrate the effectiveness of these n-block models.
机译:Keyblock是我们为基于内容的图像检索而提出的新框架,它是图像领域中基于文本的信息检索技术的概括。在此框架中,可以通过利用已用于图像压缩的矢量量化方法来构造类似于文本文档检索中的关键字的键块。然后,图像可以表示为代码矩阵,其中的元素是代码簿中关键块的索引。基于此图像表示,可以将在文本域中开发的信息检索和数据库分析技术推广到图像检索。在本文中,我们提出了名为n块模型的新模型,这些模型是n语法模型在语言建模中的通用化,以提取全面的图像特征。在文本文档中捕获上下文的努力激发了n-gram模型。类似地,捕获图像中内容的尝试促使我们考虑图像中关键块的相关性。通过将我们的方法与使用颜色特征和小波纹理特征的常规技术的性能进行比较,实验结果证明了这些n块模型的有效性。

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