In many applications - such as compression, de-noising and source separation - a good and efficient signal representation is characterized by sparsity. This means that many coefficients are close to zero, while only few ones have a non-negligible amplitude. On the other hand, real-world signals - such as audio or natural images - clearly present peculiar structures. In this paper we introduce a global optimization framework that aims at respecting the sparsity criterion while decomposing a signal over an overcomplete, multi-component dictionary. We adopt a probabilistic analysis which can lead to consider the signal internal structure. As an example that fits this framework, we propose the Weighted Basis Pursuit algorithm, based on the solu...
A series of recent results shows that if a signal admits a sufficiently sparse representation (in te...
Cooperative Greedy Pursuit Strategies are considered for approximating a signal partition subjected ...
International audienceSparse signal approximation can be used to design efficient low bit-rate codin...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
International audienceFinding a sparse approximation of a signal from an arbitrary dictionary is a v...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
In the present paper we propose a new framework for the construction of meaningful dictionaries for ...
Recent results have underlined the importance of incoherence in redundant dictionaries for a good be...
International audienceA series of recent results shows that if a signal admits a sufficiently sparse...
In a series of recent results, several authors have shown that both l¹-minimization (Basis Pursuit) ...
International audienceTen years ago, Mallat and Zhang proposed the Matching Pursuit algorithm : sinc...
This article presents an alteration of greedy algorithms like thresholding or (Orthogonal) Matching ...
International audienceSparse Decomposition (SD) of a signal on an overcomplete dictionary has recent...
Abstract: Many algorithms have been proposed to achieve sparse representation over redundant diction...
This dissertation explores L1-based methods for sparse signal processing, and in particular their ap...
A series of recent results shows that if a signal admits a sufficiently sparse representation (in te...
Cooperative Greedy Pursuit Strategies are considered for approximating a signal partition subjected ...
International audienceSparse signal approximation can be used to design efficient low bit-rate codin...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
International audienceFinding a sparse approximation of a signal from an arbitrary dictionary is a v...
Finding a sparse approximation of a signal from an arbitrary dictionary is a very useful tool to sol...
In the present paper we propose a new framework for the construction of meaningful dictionaries for ...
Recent results have underlined the importance of incoherence in redundant dictionaries for a good be...
International audienceA series of recent results shows that if a signal admits a sufficiently sparse...
In a series of recent results, several authors have shown that both l¹-minimization (Basis Pursuit) ...
International audienceTen years ago, Mallat and Zhang proposed the Matching Pursuit algorithm : sinc...
This article presents an alteration of greedy algorithms like thresholding or (Orthogonal) Matching ...
International audienceSparse Decomposition (SD) of a signal on an overcomplete dictionary has recent...
Abstract: Many algorithms have been proposed to achieve sparse representation over redundant diction...
This dissertation explores L1-based methods for sparse signal processing, and in particular their ap...
A series of recent results shows that if a signal admits a sufficiently sparse representation (in te...
Cooperative Greedy Pursuit Strategies are considered for approximating a signal partition subjected ...
International audienceSparse signal approximation can be used to design efficient low bit-rate codin...