Abstract—Many applications have benefited remarkably from low-dimensional models in the recent decade. The fact that many signals, though high dimensional, are intrinsically low dimensional has given the possibility to recover them stably from a relatively small number of their measurements. For example, in compressed sensing with the standard (synthesis) sparsity prior and in matrix completion, the number of measurements needed is propor-tional (up to a logarithmic factor) to the signal’s manifold dimension. Recently, a new natural low-dimensional signal model has been proposed: the cosparse analysis prior. In the noiseless case, it is possible to recover signals from this model, using a combinatorial search, from a number of measurements ...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
In the theory of compressed sensing (CS), the sparsity ‖x‖0 of the unknown signal x ∈ Rp is commonly...
The ability of having a sparse representation for a certain class of signals has many applications i...
Many applications have benefited remarkably from low-dimensional models in the recent decade. The fa...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
This paper investigates the problem of stable signal estimation from undersampled, noisy sub-Gaussia...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
We compare and contrast from a geometric perspective a number of low-dimensional signal models that ...
International audienceSolving an underdetermined inverse problem implies the use of a regularization...
We give a new, very general, formulation of the compressed sensing problem in terms of coordinate pr...
International audienceRecently, a cosparse analysis model was introduced as an alternative to the st...
Preprint available on arXiv since 24 Jun 2011International audienceAfter a decade of extensive study...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
In the theory of compressed sensing (CS), the sparsity ‖x‖0 of the unknown signal x ∈ Rp is commonly...
The ability of having a sparse representation for a certain class of signals has many applications i...
Many applications have benefited remarkably from low-dimensional models in the recent decade. The fa...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
This paper investigates the problem of stable signal estimation from undersampled, noisy sub-Gaussia...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
We compare and contrast from a geometric perspective a number of low-dimensional signal models that ...
International audienceSolving an underdetermined inverse problem implies the use of a regularization...
We give a new, very general, formulation of the compressed sensing problem in terms of coordinate pr...
International audienceRecently, a cosparse analysis model was introduced as an alternative to the st...
Preprint available on arXiv since 24 Jun 2011International audienceAfter a decade of extensive study...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
International audienceIn the past decade there has been a great interest in a synthesis-based model ...
In the theory of compressed sensing (CS), the sparsity ‖x‖0 of the unknown signal x ∈ Rp is commonly...
The ability of having a sparse representation for a certain class of signals has many applications i...