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., ℓ1 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 noi...
Abstract—The mathematical theory of super-resolution devel-oped recently by Candès and Fernandes-Gr...
The use of multichannel data in line spectral estimation (or frequency estimation) is common for imp...
Recent research in off-the-grid compressed sensing (CS) has demon-strated that, under certain condit...
Abstract—This paper is concerned about sparse, continuous frequency estimation in line spectral esti...
We consider the problem of estimating the line spectrum of a signal from finitely many time domain s...
Atomic norm denoising has been recently introduced as a generalization of the Least Absolute Shrinka...
The sub-Nyquist estimation of line spectra is a classical problem in signal processing, but currentl...
This licentiate thesis focuses on clustered parametric models for estimation of line spectra, when t...
This paper establishes a nearly optimal algorithm for estimating the frequencies and am-plitudes of ...
Abstract—We address the problem of estimating spectral lines from irregularly sampled data within th...
Motivated by recent work on atomic norms in inverse problems, we propose a new approach to line spec...
Inferring the fine scale properties of a signal from its coarse measurements is a common signal proc...
Given their wide applicability, several sparse high-resolution spectral estimation techniques and th...
We propose a joint sparse signal recovery approach to coherent spectral analysis of irregularly samp...
Signal acquisition, signal reconstruction and analysis of spectrum of the signal are the three most ...
Abstract—The mathematical theory of super-resolution devel-oped recently by Candès and Fernandes-Gr...
The use of multichannel data in line spectral estimation (or frequency estimation) is common for imp...
Recent research in off-the-grid compressed sensing (CS) has demon-strated that, under certain condit...
Abstract—This paper is concerned about sparse, continuous frequency estimation in line spectral esti...
We consider the problem of estimating the line spectrum of a signal from finitely many time domain s...
Atomic norm denoising has been recently introduced as a generalization of the Least Absolute Shrinka...
The sub-Nyquist estimation of line spectra is a classical problem in signal processing, but currentl...
This licentiate thesis focuses on clustered parametric models for estimation of line spectra, when t...
This paper establishes a nearly optimal algorithm for estimating the frequencies and am-plitudes of ...
Abstract—We address the problem of estimating spectral lines from irregularly sampled data within th...
Motivated by recent work on atomic norms in inverse problems, we propose a new approach to line spec...
Inferring the fine scale properties of a signal from its coarse measurements is a common signal proc...
Given their wide applicability, several sparse high-resolution spectral estimation techniques and th...
We propose a joint sparse signal recovery approach to coherent spectral analysis of irregularly samp...
Signal acquisition, signal reconstruction and analysis of spectrum of the signal are the three most ...
Abstract—The mathematical theory of super-resolution devel-oped recently by Candès and Fernandes-Gr...
The use of multichannel data in line spectral estimation (or frequency estimation) is common for imp...
Recent research in off-the-grid compressed sensing (CS) has demon-strated that, under certain condit...