小波变换域中多通道图像的索引

Sakji Sarra, B. Amel
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引用次数: 7

摘要

在这项工作中,我们的目标是在压缩域,特别是基于小波的域,优化多通道图像索引背景下的特征提取步骤。为了提取显著特征,采用两种不同的方法对多分量小波系数的分布进行建模。第一种方法是单变量方法:将频谱通道视为独立的,并从每个分量单独计算特征。第二种方法是多元的。其目的是寻找一个合适的以图像签名为参数的联合多元模型。本研究的目的是比较以下两种多元模型的检索性能:多元广义高斯分布(MGGD)模型和基于copula的模型。为此,采用适当的拟合优度检验,用多元小波系数的经验直方图比较两个模型的调整结果。其次,我们比较了基于两种模型的多变量方法在检索精度、查全率和复杂度方面的性能。对自然多通道图像进行了单变量方法和多变量方法的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indexing of multichannel images in the wavelet transform domain
In this work, we aim at optimizing the feature extraction step in the context of multichannel image indexing in the compressed domain, especially the wavelet based domain. To extract the salient signatures, the distribution of the multicomponent wavelet coefficients is modelized according to two different approaches. The first one is a univariate approach: the spectral channels are considered as independent and the signatures are separately computed from each component. The second approach is a multivariate one. It aims at finding an appropriate joint multivariate model whose parameters are the image signatures. The objective of this work is to compare the retrieval performances of the two following multivariate models: the Multivariate Generalized Gaussian Distribution (MGGD) model and a copula-based model. To this respect, an appropriate goodness-of-fit test is used in order to compare the adjustment of the the two models with the empirical histogram of the multivariate wavelet coefficients. Secondly, we compare the performances of retrieval in terms of precision, recall and complexity given by the multivariate approach based on the two models. Comparison between the univariate and the multivariate approach is also performed on natural multichannel images.
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