Compressive Sampling using Annihilating Filter-based Low-Rank Interpolation
Jong Chul Ye, Jong Min Kim, Kyong Hwan Jin, and Kiryung Lee

TL;DR
This paper introduces a novel two-step Fourier compressive sampling framework that leverages low-rank spectral domain interpolation, enabling efficient recovery of finite rate of innovations signals at near optimal sampling rates.
Contribution
It proposes a new low-rank interpolation method based on annihilating filters, generalizing spectral compressed sensing for FRI signals with performance guarantees.
Findings
Achieves near-optimal sampling rates for FRI signals.
Demonstrates superior phase transition compared to traditional compressed sensing.
Shows benefits of regularization and incoherence in cardinal spline cases.
Abstract
While the recent theory of compressed sensing provides an opportunity to overcome the Nyquist limit in recovering sparse signals, a solution approach usually takes a form of inverse problem of the unknown signal, which is crucially dependent on specific signal representation. In this paper, we propose a drastically different two-step Fourier compressive sampling framework in continuous domain that can be implemented as a measurement domain interpolation, after which a signal reconstruction can be done using classical analytic reconstruction methods. The main idea is originated from the fundamental duality between the sparsity in the primary space and the low-rankness of a structured matrix in the spectral domain, which shows that a low-rank interpolator in the spectral domain can enjoy all the benefit of sparse recovery with performance guarantees. Most notably, the proposed low-rank…
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