4.6 Article

Stable super-resolution limit and smallest singular value of restricted Fourier matrices

期刊

APPLIED AND COMPUTATIONAL HARMONIC ANALYSIS
卷 51, 期 -, 页码 118-156

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.acha.2020.10.004

关键词

Super-resolution; Vandermonde matrix; Fourier matrix; Minimum singular value; Subspace methods; MUSIC; Min-max error; Sparse recovery; Polynomial interpolation; Uncertainty principles

资金

  1. Defense Threat Reduction Agency [1-13-1-0015]
  2. Army Research Office [W911 NF-17-1-0014, W911 NF-16-1-0008]
  3. National Science Foundation [DMS-1440140]
  4. University of Maryland's Ann G. Wylie Dissertation fellowship
  5. NSF DMS [1818751]
  6. Georgia Institute of Technology
  7. AMS-Simons Travel Grants
  8. Division Of Mathematical Sciences
  9. Direct For Mathematical & Physical Scien [1818751] Funding Source: National Science Foundation

向作者/读者索取更多资源

This study focuses on solving the inverse problem of recovering the locations and amplitudes of point sources represented as a discrete measure, introduces a clumps model, derives a non-asymptotic lower bound for the minimum singular value of Vandermonde matrix, and establishes an exact dependence on the Super-Resolution Factor.
We consider the inverse problem of recovering the locations and amplitudes of a collection of point sources represented as a discrete measure, given M + 1 of its noisy low-frequency Fourier coefficients. Super-resolution refers to a stable recovery when the distance Delta between the two closest point sources is less than 1/M. We introduce a clumps model where the point sources are closely spaced within several clumps. Under this assumption, we derive a non-asymptotic lower bound for the minimum singular value of a Vandermonde matrix whose nodes are determined by the point sources. Our estimate is given as a weighted l(2) sum, where each term only depends on the configuration of each individual clump. The main novelty is that our lower bound obtains an exact dependence on the Super-Resolution Factor SRF = (M Delta)(-1). As noise level increases, the sensitivity of the noise-space correlation function in the MUSIC algorithm degrades according to a power law in SRF where the exponent depends on the cardinality of the largest clump. Numerical experiments validate our theoretical bounds for the minimum singular value and the sensitivity of MUSIC. We also provide lower and upper bounds for a min-max error of super-resolution for the grid model, which in turn is closely related to the minimum singular value of Vandermonde matrices. (c) 2020 Elsevier Inc. All rights reserved.

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