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Weighted frames of exponentials and stable recovery of multidimensional functions from nonuniform Fourier samples

机译:指数加权框架和非均匀傅立叶样本的多维函数的稳定恢复

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In this paper, we consider the problem of recovering a compactly supported multivariate function from a collection of pointwise samples of its Fourier transform taken nonuniformly. We do this by using the concept of weighted Fourier frames. A seminal result of Beurling shows that sampling points give rise to a classical Fourier frame provided they are relatively separated and of sufficient density. However, this result does not allow for arbitrary clustering of sampling points, as is often the case in practice. Whilst keeping the density condition sharp and dimension independent, our first result removes the separation condition and shows that density alone suffices. However, this result does not lead to estimates for the frame bounds. A known result of Grochenig provides explicit estimates, but only subject to a density condition that deteriorates linearly with dimension. In our second result we improve these bounds by reducing the dimension dependence. In particular, we provide explicit frame bounds which are dimensionless for functions having compact support contained in a sphere. Next, we demonstrate how our two main results give new insight into a reconstruction algorithm based on the existing generalized sampling framework that allows for stable and quasi-optimal reconstruction in any particular basis from a finite collection of samples. Finally, we construct sufficiently dense sampling schemes that are often used in practice jittered, radial and spiral sampling schemes and provide several examples illustrating the effectiveness of our approach when tested on these schemes. (C) 2015 Elsevier Inc. All rights reserved.
机译:在本文中,我们考虑了从不均匀地进行傅立叶变换的点状样本集合中恢复紧密支持的多元函数的问题。我们通过使用加权傅立叶框架的概念来实现。 Beurling的开创性结果表明,只要采样点相对分离且具有足够的密度,便会形成经典的傅里叶框架。但是,该结果不允许采样点的任意聚类,这在实践中经常是这种情况。在保持密度条件清晰和尺寸独立的同时,我们的第一个结果消除了分离条件,并表明仅密度就足够了。但是,此结果不会导致估计帧边界。 Grochenig的已知结果提供了明确的估计,但仅受密度条件的影响,该条件随尺寸线性降低。在第二个结果中,我们通过减少尺寸依赖性来改善这些界限。特别是,我们提供了明确的框架边界,这些边界对于在球形中包含紧凑支撑的函数是无量纲的。接下来,我们将说明我们的两个主要结果如何基于现有的广义采样框架为重构算法提供新的见解,该框架允许从有限的样本集合中的任何特定基础上进行稳定且准最优的重构。最后,我们构建了足够密集的采样方案,这些方案经常在实际的抖动,径向和螺旋采样方案中使用,并提供了一些示例,说明了在这些方案上进行测试时我们方法的有效性。 (C)2015 Elsevier Inc.保留所有权利。

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