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Multiscale colour texture retrieval using the geodesic distance between multivariate generalized Gaussian models

机译:多体彩色纹理检索,使用多变量通用高斯模型之间的测地距离

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This contribution concerns the retrieval of colour texture. The interband correlation structure is considered by modeling the heavy-tailed image wavelet histograms with a multivariate generalized Gaussian. As a similarity measure we propose to use the Rao geodesic distance, which, in contrast to the Kullback-Leibler divergence, exists in a closed form for any fixed value of the shape parameter of the distribution. We apply this in several retrieval experiments. The modeling of the interband correlation significantly increases retrieval rates, while the geodesic distance is shown to outperform the Kullback-Leibler divergence. A multivariate Laplace distribution yields better results than a Gaussian, indicating the potential of a model with variable shape parameter together with the geodesic distance.
机译:这一贡献涉及颜色纹理的检索。通过用多变量通用高斯模拟重型图像小波直方图来考虑基间相关结构。作为相似度量,我们建议使用RAO测量距离,与Kullback-Leibler发散相比,以封闭形式存在于分布的形状参数的任何固定值。我们在几个检索实验中应用这一点。间带状相关的建模显着增加了检索速率,而测量距离被示出以越高扭转莱布勒发散。多元拉普拉斯分布产生比高斯的更好的结果,指示具有可变形状参数的模型与测地距离的电位。

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