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Copula-based statistical models for multicomponent image retrieval using a Bayesian copula selection

机译:基于Copula的统计模型,用于使用贝叶斯copula选择进行多分量图像检索

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In this paper, we are interested in multicomponent image indexing in the Wavelet Transform (WT) domain. In this respect, the joint distribution of the WT coefficients through all the channels is modeled by a parametric copula-based model. The parameters of this model are considered as the salient signatures of the image content. The relevance of this model is based on a reliable choice of both the appropriate marginal distributions and the copula density reflecting the cross-component correlation. The contribution of this work consists in proposing a Bayesian framework to select the copula family reflecting the best the inter-component dependence. Besides, a scalable organization of the features database is carried out in order to enable a coarse-to-fine resolution retrieval procedure suitable for progressive telebrowsing applications. Experimental results indicate that our new approach improves the retrieval performances achieved by conventionalworks for which the copula family selection generally relies on guesswork and testing of multiple hypothesis.
机译:在本文中,我们对小波变换(WT)域中的多分量图像索引感兴趣。在这方面,WT系数在所有通道中的联合分布是通过基于参数copula的模型来建模的。该模型的参数被视为图像内容的显着特征。该模型的相关性基于对适当的边际分布和反映跨组件相关性的copula密度的可靠选择。这项工作的贡献在于提出了一种贝叶斯框架,以选择最能反映组件间依赖性的copula家族。此外,特征数据库的可扩展组织被执行以使得适合于渐进式远程浏览应用的从粗到细分辨率的检索过程成为可能。实验结果表明,我们的新方法改善了常规工作所获得的检索性能,而传统的系谱系选择通常依赖于猜测和多种假设的检验。

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