AbstractThis paper is concerned with linear inverse problems where the solution is assumed to have a sparse expansion with respect to several bases or frames. We were mainly motivated by the following two different approaches: (1) Jaillet and Torrésani [F. Jaillet, B. Torrésani, Time–frequency jigsaw puzzle: Adaptive multi-window and multi-layered Gabor expansions, preprint, 2005] and Molla and Torrésani [S. Molla, B. Torrésani, A hybrid audio scheme using hidden Markov models of waveforms, Appl. Comput. Harmon. Anal. (2005), in press] have suggested to represent audio signals by means of at least a wavelet for transient and a local cosine dictionary for tonal components. The suggested technology produces sparse representations of audio sig...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
: A wide variety of problems in differentll and integral equations require a-plication and inversion...
Sparse and redundant representation of data enables the description of signals as linear combinatio...
AbstractThis paper is concerned with linear inverse problems where the solution is assumed to have a...
AbstractIn this paper, we will present a generalization for a minimization problem from I. Daubechie...
A linear inverse problem is proposed that requires the determination of multiple unknown signal vect...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
International audienceFinding a sparse approximation of a signal from an arbitrary dictionary is a v...
Recent studies in linear inverse problems have recognized the sparse representation of unknown signa...
International audienceIn this paper, we propose two algorithms to solve a large class of linear inve...
Dans le contexte général de la résolution de problèmes inverses en acoustique et traitement du s...
This dissertation explores L1-based methods for sparse signal processing, and in particular their ap...
Time-frequency representations are commonly used tools for the representation of audio and in partic...
In a series of recent results, several authors have shown that both l¹-minimization (Basis Pursuit) ...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
: A wide variety of problems in differentll and integral equations require a-plication and inversion...
Sparse and redundant representation of data enables the description of signals as linear combinatio...
AbstractThis paper is concerned with linear inverse problems where the solution is assumed to have a...
AbstractIn this paper, we will present a generalization for a minimization problem from I. Daubechie...
A linear inverse problem is proposed that requires the determination of multiple unknown signal vect...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
International audienceFinding a sparse approximation of a signal from an arbitrary dictionary is a v...
Recent studies in linear inverse problems have recognized the sparse representation of unknown signa...
International audienceIn this paper, we propose two algorithms to solve a large class of linear inve...
Dans le contexte général de la résolution de problèmes inverses en acoustique et traitement du s...
This dissertation explores L1-based methods for sparse signal processing, and in particular their ap...
Time-frequency representations are commonly used tools for the representation of audio and in partic...
In a series of recent results, several authors have shown that both l¹-minimization (Basis Pursuit) ...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
: A wide variety of problems in differentll and integral equations require a-plication and inversion...
Sparse and redundant representation of data enables the description of signals as linear combinatio...