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Using Neighborhood Distributions of Wavelet Coefficients for On-the-Fly, Multiscale-Based Image Retrieval

机译:使用基于多尺度的图像检索的小波系数的邻域分布

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In this paper, we define a similarity measure to compare images in the context of (indexing and) retrieval. We use the Kullback-Leibler (KL) divergence to compare sparse multiscale image descriptions in a wavelet domain. The KL divergence between wavelet coefficient distributions has already been used as a similarity measure between images. The novelty here is twofold. Firstly, we consider the dependencies between the coefficients by means of distributions of mixed intra/interscale neighborhoods. Secondly, to cope with the high-dimensionality of the resulting description space, we estimate the KL divergences in the k-th nearest neighbor framework, instead of using classical fixed size kernel methods. Query-by-example experiments are presented.
机译:在本文中,我们定义了一种相似度测量来比较(索引和)检索的上下文中的图像。我们使用kullback-leibler(kl)发散来比较小波域中的稀疏多尺度图像描述。小波系数分布之间的KL发散已经被用作图像之间的相似度量。这里的新奇是双重的。首先,我们考虑通过混合帧内/三段邻域的分布来考虑系数之间的依赖关系。其次,为了应对所产生的描述空间的高维度,我们估计了第k个最近邻框架中的KL分歧,而不是使用经典的固定大小内核方法。提出了逐个示例实验。

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