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A Deterministic Sub-linear Time Sparse Fourier Algorithm via Non-adaptive Compressed Sensing Methods

Discrete Mathematics 2007-08-10 v1 Numerical Analysis

Abstract

We study the problem of estimating the best B term Fourier representation for a given frequency-sparse signal (i.e., vector) A\textbf{A} of length NBN \gg B. More explicitly, we investigate how to deterministically identify B of the largest magnitude frequencies of A^\hat{\textbf{A}}, and estimate their coefficients, in polynomial(B,logN)(B,\log N) time. Randomized sub-linear time algorithms which have a small (controllable) probability of failure for each processed signal exist for solving this problem. However, for failure intolerant applications such as those involving mission-critical hardware designed to process many signals over a long lifetime, deterministic algorithms with no probability of failure are highly desirable. In this paper we build on the deterministic Compressed Sensing results of Cormode and Muthukrishnan (CM) \cite{CMDetCS3,CMDetCS1,CMDetCS2} in order to develop the first known deterministic sub-linear time sparse Fourier Transform algorithm suitable for failure intolerant applications. Furthermore, in the process of developing our new Fourier algorithm, we present a simplified deterministic Compressed Sensing algorithm which improves on CM's algebraic compressibility results while simultaneously maintaining their results concerning exponential decay.

Keywords

Cite

@article{arxiv.0708.1211,
  title  = {A Deterministic Sub-linear Time Sparse Fourier Algorithm via Non-adaptive Compressed Sensing Methods},
  author = {M. A. Iwen},
  journal= {arXiv preprint arXiv:0708.1211},
  year   = {2007}
}

Comments

16 pages total, 10 in paper, 6 in appended

R2 v1 2026-06-21T09:06:02.265Z