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Multivariate texture discrimination based on geodesics to class centroids on a generalized Gaussian Manifold

机译:在广义高斯流形上基于测地线到类质心的多元纹理辨识

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摘要

A texture discrimination scheme is proposed wherein probability distributions are deployed on a probabilistic manifold for modeling the wavelet statistics of images. We consider the Rao geodesic distance (GD) to the class centroid for texture discrimination in various classification experiments. We compare the performance of GD to class centroid with the Euclidean distance in a similar context, both in terms of accuracy and computational complexity. Also, we compare our proposed classification scheme with the k-nearest neighbor algorithm. Univariate and multivariate Gaussian and Laplace distributions, as well as generalized Gaussian distributions with variable shape parameter are each evaluated as a statistical model for the wavelet coefficients. The GD to the centroid outperforms the Euclidean distance and yields superior discrimination compared to the k-nearest neighbor approach.
机译:提出了一种纹理鉴别方案,其中概率分布被部署在概率流形上以对图像的小波统计建模。在各种分类实验中,我们考虑到类质心的Rao测地距离(GD),以进行纹理识别。在准确性和计算复杂性方面,我们将GD的性能与具有类似欧氏距离的类质心进行了比较。此外,我们将我们提出的分类方案与k最近邻算法进行了比较。将单变量和多元高斯和拉普拉斯分布以及具有可变形状参数的广义高斯分布分别评估为小波系数的统计模型。与k近邻法相比,到质心的GD优于欧几里得距离,并且具有更好的分辨力。

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