English

On Gridless Sparse Methods for Line Spectral Estimation From Complete and Incomplete Data

Information Theory 2023-07-19 v2 math.IT Machine Learning

Abstract

This paper is concerned about sparse, continuous frequency estimation in line spectral estimation, and focused on developing gridless sparse methods which overcome grid mismatches and correspond to limiting scenarios of existing grid-based approaches, e.g., 1\ell_1 optimization and SPICE, with an infinitely dense grid. We generalize AST (atomic-norm soft thresholding) to the case of nonconsecutively sampled data (incomplete data) inspired by recent atomic norm based techniques. We present a gridless version of SPICE (gridless SPICE, or GLS), which is applicable to both complete and incomplete data without the knowledge of noise level. We further prove the equivalence between GLS and atomic norm-based techniques under different assumptions of noise. Moreover, we extend GLS to a systematic framework consisting of model order selection and robust frequency estimation, and present feasible algorithms for AST and GLS. Numerical simulations are provided to validate our theoretical analysis and demonstrate performance of our methods compared to existing ones.

Keywords

Cite

@article{arxiv.1407.2490,
  title  = {On Gridless Sparse Methods for Line Spectral Estimation From Complete and Incomplete Data},
  author = {Zai Yang and Lihua Xie},
  journal= {arXiv preprint arXiv:1407.2490},
  year   = {2023}
}

Comments

15 pages, double-column, 7 figures, accepted by IEEE Transaction on Signal Processing in March 2015

R2 v1 2026-06-22T04:59:35.732Z