International audienceThis article treats the problem of learning a dictionary providing sparse representations for a given signal class, via ℓ1-minimisation. The problem is to identify a dictionary [\Phi] from a set of training samples Y knowing that [Y = \PhiX] for some coefficient matrix X. Using a characterisation of coefficient matrices X that allow to recover any basis as a local minimum of an ℓ1-minimisation problem, it is shown that certain types of sparse random coefficient matrices will ensure local identifiability of the basis with high probability. The typically sufficient number of training samples grows up to a logarithmic factor linearly with the signal dimension
A large set of signals can sometimes be described sparsely using a dictionary, that is, every elemen...
Sparse signal models approximate signals using a small number of elements from a large set of vector...
The idea that many classes of signals can be represented by linear combination of a small set of ato...
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...
This article treats the problem of learning a dictionary providing sparse representations for a give...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
International audienceMany recent works have shown that if a given signal admits a sufficiently spar...
International audienceWe propose an ℓ1 criterion for dictionary learning for sparse signal represent...
The idea that many important classes of signals can be well-represented by linear combi-nations of a...
The idea that many important classes of signals can be well-represented by linear combi-nations of a...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
We consider the problem of recovering a matrix from its action on a known vector in the setting wher...
We consider the problem of learning sparsely used dictionaries with an arbitrary square dictionary a...
Sparsity as a powerful instrument in signal processing is now commonplace. However, it is also well ...
A large set of signals can sometimes be described sparsely using a dictionary, that is, every elemen...
Sparse signal models approximate signals using a small number of elements from a large set of vector...
The idea that many classes of signals can be represented by linear combination of a small set of ato...
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...
This article treats the problem of learning a dictionary providing sparse representations for a give...
International audienceThis article treats the problem of learning a dictionary providing sparse repr...
International audienceMany recent works have shown that if a given signal admits a sufficiently spar...
International audienceWe propose an ℓ1 criterion for dictionary learning for sparse signal represent...
The idea that many important classes of signals can be well-represented by linear combi-nations of a...
The idea that many important classes of signals can be well-represented by linear combi-nations of a...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
We consider the problem of recovering a matrix from its action on a known vector in the setting wher...
We consider the problem of learning sparsely used dictionaries with an arbitrary square dictionary a...
Sparsity as a powerful instrument in signal processing is now commonplace. However, it is also well ...
A large set of signals can sometimes be described sparsely using a dictionary, that is, every elemen...
Sparse signal models approximate signals using a small number of elements from a large set of vector...
The idea that many classes of signals can be represented by linear combination of a small set of ato...