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Color Texture Discrimination Using the Principal Geodesic Distance on a Multivariate Generalized Gaussian Manifold

机译:使用多元广义高斯流形上的主测地线距离进行颜色纹理区分

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We present a new texture discrimination method for textured color images in the wavelet domain. In each wavelet subband, the correlation between the color bands is modeled by a multivariate generalized Gaussian distribution with fixed shape parameter (Gaussian, Laplacian). On the corresponding Riemannian manifold, the shape of texture clusters is characterized by means of principal geodesic analysis, specifically by the principal geodesic along which the cluster exhibits its largest variance. Then, the similarity of a texture to a class is defined in terms of the Rao geodesic distance on the manifold from the texture's distribution to its projection on the principal geodesic of that class. This similarity measure is used in a classification scheme, referred to as principal geodesic classification (PGC). It is shown to perform significantly better than several other classifiers.
机译:我们提出了一种新的小波域纹理彩色图像纹理判别方法。在每个小波子带中,色带之间的相关性通过具有固定形状参数(高斯,拉普拉斯)的多元广义高斯分布来建模。在相应的黎曼流形上,纹理聚类的形状通过主测地线分析来表征,特别是通过主测地线分析,聚类沿着该主测地线表现出最大的方差。然后,根据从纹理分布到其在该类主要测地上的投影的流形上的Rao测地距离定义纹理与类的相似性。这种相似性度量用于分类方案中,称为主测地线分类(PGC)。它显示出比其他几个分类器明显更好的性能。

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