Sparse non-negative super-resolution -- simplified and stabilised
Armin Eftekhari, Jared Tanner, Andrew Thompson, Bogdan Toader, Hemant, Tyagi

TL;DR
This paper proves that non-negative super-resolution can be achieved without regularization, ensuring unique source localization and stability under measurement errors, using only non-negativity constraints and Chebyshev system properties.
Contribution
It shows non-negativity alone suffices for super-resolution, removing the need for regularizers, and provides stability and convergence results for approximate solutions.
Findings
Unique non-negative measure when samples are exact and conditions hold
Stability of solutions within bounds of measurement noise
Explicit results for Gaussian window case
Abstract
The convolution of a discrete measure, , with a local window function, , is a common model for a measurement device whose resolution is substantially lower than that of the objects being observed. Super-resolution concerns localising the point sources with an accuracy beyond the essential support of , typically from samples , where indicates an inexactness in the sample value. We consider the setting of being non-negative and seek to characterise all non-negative measures approximately consistent with the samples. We first show that is the unique non-negative measure consistent with the samples provided the samples are exact, i.e. , samples are available, and generates a Chebyshev system. This is independent of how…
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