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A nonparametric Riemannian framework on tensor field with application to foreground segmentation

机译:张量场上的非参数黎曼框架及其在前景分割中的应用

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Background modelling on tensor field has recently been proposed for foreground detection tasks. Taking into account the Riemannian structure of the tensor manifold, recent research has focused on developing parametric methods on the tensor domain e.g. gaussians mixtures (GMM) [7]. However, in some scenarios, simple parametric models do not accurately explain the physical processes. Kernel density estimators (KDE) have been successful to model, on Euclidean sample spaces the nonparametric nature of complex, time varying, and non-static backgrounds [8]. Founded on the mathematically rigorous KDE paradigm on general Riemannian manifolds [15], we define a KDE specifically to operate on the tensor manifold. We present a mathematically-sound framework for nonparametric modeling on tensor field to foreground segmentation. We endow the tensor manifold with two well-founded Riemannian metrics, i.e. Affine-Invariant and Log-Euclidean. Theoretical aspects are defined and the metrics are compared experimentally. Theoretic analysis and experimental results demonstrate the promise/effectiveness of the framework.
机译:张量场的背景建模最近已被提出用于前景检测任务。考虑到张量流形的黎曼结构,最近的研究集中在开发张量域上的参数方法,例如高斯混合物(GMM)[7]。但是,在某些情况下,简单的参数模型不能准确地解释物理过程。核密度估计器(KDE)已成功地在欧几里得样本空间上建模了复杂,时变和非静态背景的非参数性质[8]。基于数学上严格的黎曼流形上的KDE范式[15],我们定义了专门用于张量流形上的KDE。我们为从张量场到前景分割的非参数建模提供了一个数学上合理的框架。我们为张量流形赋予了两个良好的黎曼度量,即仿射不变和对数欧几里得。定义了理论方面,并通过实验比较了指标。理论分析和实验结果证明了该框架的前景/有效性。

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