Constrained by practical and economical aspects, in many applications, one often deals with data sampled irregularly and incompletely. The use of irregularly sampled data may result in some artifacts and poor spatial resolution. Therefore, the preprocessing of the measurements onto a regular grid plays an important step. One of the methods achieving this objective is based on the Fourier reconstruction, which involves an underdetermined system of equations. The recent Uniform Uncertainty Principle (UUP) uses convex optimization through l 1 minimization for solving underdetermined systems. The l 1 minimization admits certain theoretical guarantees and simpler implementation. The present work applies UUP to the Fourier-based data regularizati...
In many scientific frameworks (e.g., radio and high energy astronomy, medical imaging) the data at o...
In this paper we propose a Potts-Markov prior and total variation regularization associated with Bay...
We study the problem of recovering an unknown compactly-supported multivariate function from samples...
Constrained by practical and economical aspects, in many applications, one often deals with data sam...
Inferring the fine scale properties of a signal from its coarse measurements is a common signal proc...
This paper seeks to bridge the two major algorithmic approaches to sparse signal recovery f...
none3noIn this paper the reconstruction of a two-dimensional image from a nonuniform sampling of its...
We demonstrate a simple greedy algorithm that can reliably recover a d-dimensional vector v...
Recent compressive sensing results show that it is possible to accurately reconstruct certain compre...
Constrained by practical and economical considerations, one often uses seismic data with missing tra...
regularization is widely used in various applications for sparsifying transform. In Wasserman et al....
International audienceThis paper is devoted to a theoretical and numerical study of different ways o...
In this thesis, we study the problem of recovering signals, in particular images, that approximately...
In several applications, data are collected in the frequency (Fourier) domain non-uniformly, either ...
abstract: Imaging technologies such as Magnetic Resonance Imaging (MRI) and Synthetic Aperture Radar...
In many scientific frameworks (e.g., radio and high energy astronomy, medical imaging) the data at o...
In this paper we propose a Potts-Markov prior and total variation regularization associated with Bay...
We study the problem of recovering an unknown compactly-supported multivariate function from samples...
Constrained by practical and economical aspects, in many applications, one often deals with data sam...
Inferring the fine scale properties of a signal from its coarse measurements is a common signal proc...
This paper seeks to bridge the two major algorithmic approaches to sparse signal recovery f...
none3noIn this paper the reconstruction of a two-dimensional image from a nonuniform sampling of its...
We demonstrate a simple greedy algorithm that can reliably recover a d-dimensional vector v...
Recent compressive sensing results show that it is possible to accurately reconstruct certain compre...
Constrained by practical and economical considerations, one often uses seismic data with missing tra...
regularization is widely used in various applications for sparsifying transform. In Wasserman et al....
International audienceThis paper is devoted to a theoretical and numerical study of different ways o...
In this thesis, we study the problem of recovering signals, in particular images, that approximately...
In several applications, data are collected in the frequency (Fourier) domain non-uniformly, either ...
abstract: Imaging technologies such as Magnetic Resonance Imaging (MRI) and Synthetic Aperture Radar...
In many scientific frameworks (e.g., radio and high energy astronomy, medical imaging) the data at o...
In this paper we propose a Potts-Markov prior and total variation regularization associated with Bay...
We study the problem of recovering an unknown compactly-supported multivariate function from samples...