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Unsupervised Label Learning on Manifolds by Spatially Regularized Geometric Assignment

机译:通过空间规则化几何分配对流形进行无监督标签学习

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Manifold models of image features abound in computer vision. We present a novel approach that combines unsupervised computation of representative manifold-valued features, called labels, and the spatially regularized assignment of these labels to given manifold-valued data. Both processes evolve dynamically through two Riemannian gradient flows that are coupled. The representation of labels and assignment variables are kept separate, to enable the flexible application to various manifold data models. As a case study, we apply our approach to the unsupervised learning of covariance descriptors on the positive definite matrix manifold, through spatially regularized geometric assignment.
机译:图像特征的流形模型在计算机视觉中比比皆是。我们提出了一种新颖的方法,将无监督的代表性流形值特征(称为标签)的计算与这些标签在给定流形值数据上的空间正则化分配相结合。这两个过程都是通过耦合的两个黎曼梯度流动态演化的。标签和赋值变量的表示保持分开,以便灵活地应用于各种流形数据模型。作为案例研究,我们通过空间正则化的几何分配将我们的方法应用于正定矩阵流形上协方差描述符的无监督学习。

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