首页> 外文期刊>SIAM Journal on Mathematical Analysis >BEYOND CONSISTENT RECONSTRUCTIONS: OPTIMALITY AND SHARP BOUNDS FOR GENERALIZED SAMPLING, AND APPLICATION TO THE UNIFORM RESAMPLING PROBLEM?
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BEYOND CONSISTENT RECONSTRUCTIONS: OPTIMALITY AND SHARP BOUNDS FOR GENERALIZED SAMPLING, AND APPLICATION TO THE UNIFORM RESAMPLING PROBLEM?

机译:超越一致的重构:广义采样的最优和锐度界,并应用于统一的重采样问题?

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摘要

Generalized sampling is a recently developed linear framework for sampling and reconstruction in separable Hilbert spaces. It allows one to recover any element in any finitedimensional subspace given finitely many of its samples with respect to an arbitrary basis or frame. Unlike more common approaches for this problem, such as the consistent reconstruction technique of Eldar and others, it leads to numerical methods possessing both guaranteed stability and accuracy. The purpose of this paper is twofold. First, we give a complete and formal analysis of generalized sampling, the main result of which being the derivation of new, sharp bounds for the accuracy and stability of this approach. Such bounds improve upon those given previously and result in a necessary and sufficient condition, the stable sampling rate, which guarantees a priori a good reconstruction. Second, we address the topic of optimality. Under some assumptions, we show that generalized sampling is an optimal, stable method. Correspondingly, whenever these assumptions hold, the stable sampling rate is a universal quantity. In the final part of the paper we illustrate our results by applying generalized sampling to the so-called uniform resampling problem.
机译:广义采样是最近开发的线性框架,用于在可分离的希尔伯特空间中进行采样和重构。相对于任意基础或框架,它允许在有限的多个子样本中给定有限个子空间中的任何元素。与更常见的解决此问题的方法(例如Eldar等人的一致重建技术)不同,它导致数值方法具有保证的稳定性和准确性。本文的目的是双重的。首先,我们对广义采样进行了完整和形式化的分析,其主要结果是为这种方法的准确性和稳定性推导出了新的,清晰的界限。这样的界限在先前给出的界限的基础上有所改进,并导致了必要和充分的条件,即稳定的采样率,从而保证了先验的良好重构。第二,我们讨论最优性的话题。在某些假设下,我们表明广义采样是一种最佳,稳定的方法。相应地,只要这些假设成立,稳定的采样率就是一个普遍的数量。在本文的最后部分,我们通过将广义采样应用于所谓的统一重采样问题来说明我们的结果。

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