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Geometric multiscale decompositions of dynamic low-rank matrices

机译:动态低秩矩阵的几何多尺度分解

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The present paper is concerned with the study of manifold-valued multiscale transforms with a focus on the Stiefel manifold. For this specific geometry we derive several formulas and algorithms for the computation of geometric means which will later enable us to construct multiscale transforms of wavelet type. As an application we study compression of piecewise smooth families of low-rank matrices both for synthetic data and also real-world data arising in hyperspectral imaging. As a main theoretical contribution we show that the manifold-valued wavelet transforms can achieve an optimal N-term approximation rate for piecewise smooth functions with possible discontinuities. This latter result is valid for arbitrary manifolds.
机译:本文关注流形值多尺度变换的研究,重点是Stiefel流形。对于这种特定的几何形状,我们导出了用于计算几何均数的一些公式和算法,这些公式和算法将使我们能够构造小波类型的多尺度变换。作为应用程序,我们研究合成数据以及高光谱成像中产生的真实数据的低秩矩阵分段平滑族的压缩。作为主要的理论贡献,我们证明了对于具有可能不连续性的分段平滑函数,流形值小波变换可以实现最佳的N项逼近率。后一结果对于任意歧管均有效。

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