AbstractAn important problem in the theory of sparse approximation is to identify well-conditioned subsets of vectors from a general dictionary. In most cases, current results do not apply unless the number of vectors is smaller than the square root of the ambient dimension, so these bounds are too weak for many applications. This paper shatters the square-root bottleneck by focusing on random subdictionaries instead of arbitrary subdictionaries. It provides explicit bounds on the extreme singular values of random subdictionaries that hold with overwhelming probability. The results are phrased in terms of the coherence and spectral norm of the dictionary, which capture information about its global geometry. The proofs rely on standard tools...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
We consider the problem of reconstructing a sparse signal x^0\in{\bb R}^n from a limited number of ...
AbstractAn important problem in the theory of sparse approximation is to identify well-conditioned s...
The linear model, in which a set of observations is assumed to be given by a linear combination of c...
In an incoherent dictionary, most signals that admit a sparse representation admit a unique sparse r...
A popular approach within the signal processing and machine learning communities consists in modelli...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
This paper appeared as technical report in 2003, see http://hal.inria.fr/inria-00564038/Internationa...
International audienceA series of recent results shows that if a signal admits a sufficiently sparse...
AbstractThe purpose of this paper is to study sparse representations of signals from a general dicti...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
AbstractThis article presents novel results concerning the recovery of signals from undersampled dat...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
This article presents an alteration of greedy algorithms like thresholding or (Orthogonal) Matching ...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
We consider the problem of reconstructing a sparse signal x^0\in{\bb R}^n from a limited number of ...
AbstractAn important problem in the theory of sparse approximation is to identify well-conditioned s...
The linear model, in which a set of observations is assumed to be given by a linear combination of c...
In an incoherent dictionary, most signals that admit a sparse representation admit a unique sparse r...
A popular approach within the signal processing and machine learning communities consists in modelli...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
This paper appeared as technical report in 2003, see http://hal.inria.fr/inria-00564038/Internationa...
International audienceA series of recent results shows that if a signal admits a sufficiently sparse...
AbstractThe purpose of this paper is to study sparse representations of signals from a general dicti...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
AbstractThis article presents novel results concerning the recovery of signals from undersampled dat...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
This article presents an alteration of greedy algorithms like thresholding or (Orthogonal) Matching ...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
We consider the problem of reconstructing a sparse signal x^0\in{\bb R}^n from a limited number of ...