Multidimensional Gradient-MUSIC: A Global Nonconvex Optimization Framework for Optimal Resolution
Albert Fannjiang, Weilin Li

TL;DR
This paper introduces a multidimensional Gradient-MUSIC framework for nonharmonic frequency estimation, providing a constructive global optimization approach with theoretical guarantees under noisy conditions.
Contribution
It develops a structural theory ensuring the perturbed MUSIC landscape allows efficient global optimization for multidimensional super-resolution.
Findings
Uniform recovery guarantees under deterministic noise
Error bounds scale optimally with noise and resolution
Method applies to discrete and continuous sampling geometries
Abstract
We develop a multidimensional version of Gradient-MUSIC for estimating the frequencies of a nonharmonic signal from noisy samples. The guiding principle is that frequency recovery should be based only on the signal subspace determined by the data. From this viewpoint, the MUSIC functional is an economical nonconvex objective encoding the relevant information, and the problem becomes one of understanding the geometry of its perturbed landscape. Our main contribution is a general structural theory showing that, under explicit conditions on the measurement kernel and the perturbation of the signal subspace, the perturbed MUSIC function is an admissible optimization landscape: suitable initial points can be found efficiently by coarse thresholding, gradient descent converges to the relevant local minima, and these minima obey quantitative error bounds. Thus the theory is not merely…
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