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Parameters estimate of Riemannian Gaussian distribution in the manifold of covariance matrices

机译:协方差矩阵流形中黎曼高斯分布的参数估计

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The study of Pm, the manifold of m × m symmetric positive definite matrices, has recently become widely popular in many engineering applications, like radar signal processing, mechanics, computer vision, image processing, and medical imaging. A large body of literature is devoted to the barycentre of a set of points in Pm and the concept of barycentre has become essential to many applications and procedures, for instance classification of SPD matrices. However this concept is often used alone in order to define and characterize a set of points. Less attention is paid to the characterization of the shape of samples in the manifold, or to the definition of a probabilistic model, to represent the statistical variability of data in Pm. Here we consider Gaussian distributions and mixtures of Gaussian distributions on Pm. In particular we deal with parameter estimation of such distributions. This problem, while it is simple in the manifold P2, becomes harder for higher dimensions, since there are some quantities involved whose analytic expression is difficult to derive. In this paper we introduce a smooth estimate of these quantities using convex cubic splines, and we show that in this case the parameters estimate is coherent with theoretical results. We also present some simulations and a real EEG data analysis.
机译:对m×m对称正定矩阵的流形Pm的研究最近在许多工程应用中广为流行,例如雷达信号处理,力学,计算机视觉,图像处理和医学成像。大量文献致力于Pm中一组点的重心,并且重心的概念对于许多应用程序和过程(例如SPD矩阵的分类)已变得至关重要。但是,为了定义和表征一组点,通常经常单独使用此概念。较少关注流形中样品形状的表征或概率模型的定义,以表示Pm中数据的统计变异性。在这里,我们考虑高斯分布和Pm上高斯分布的混合。特别地,我们处理这种分布的参数估计。尽管在歧管P2中很简单,但由于涉及一些量,其解析表达式难以推导,因此对于较高的尺寸,此问题变得更加困难。在本文中,我们使用凸三次样条引入了对这些量的平滑估计,并表明在这种情况下,参数估计与理论结果是一致的。我们还提供了一些模拟和真实的EEG数据分析。

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