Sampling and (sparse) stochastic processes: A tale of splines and innovation

M. Unser
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引用次数: 1

Abstract

The commonality between splines and Gaussian or sparse stochastic processes is that they are ruled by the same type of differential equations. Our purpose here is to demonstrate that this has profound implications for the three primary forms of sampling: uniform, nonuniform, and compressed sensing. The connection with classical sampling is that there is a one-to-one correspondence between spline interpolation and the minimum-mean-square-error reconstruction of a Gaussian process from its uniform or nonuniform samples. The caveat, of course, is that the spline type has to be matched to the operator that whitens the process. The connection with compressed sensing is that the non-Gaussian processes that are ruled by linear differential equations generally admit a parsimonious representation in a wavelet-like basis. There is also a construction based on splines that yields a wavelet-like basis that is matched to the underlying differential operator. It has been observed that expansions in such bases provide excellent M-term approximations of sparse processes. This property is backed by recent estimates of the local Besov regularity of sparse processes.
抽样和(稀疏)随机过程:样条和创新的故事
样条和高斯或稀疏随机过程的共同点是它们由相同类型的微分方程控制。我们在这里的目的是证明这对三种主要形式的采样有深远的影响:均匀、非均匀和压缩感知。与经典抽样的联系是,样条插值与高斯过程的均匀或非均匀样本的最小均方误差重建之间存在一对一的对应关系。当然,需要注意的是样条类型必须与使过程变白的操作符匹配。与压缩感知的联系是,由线性微分方程控制的非高斯过程通常允许在类小波基中进行简化表示。还有一种基于样条的构造,它产生与底层微分算子匹配的类小波基。已经观察到,在这些基中的展开式提供了稀疏过程的极好的m项近似。最近对稀疏过程的局部Besov正则性的估计支持了这一性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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