Given a dataset, the task of learning a transform that allows sparse representations of the data bears the name of dictionary learning. In many applications, these learned dictionaries represent the data much better than the static well-known transforms (Fourier, Hadamard etc.). The main downside of learned transforms is that they lack structure and, therefore, they are not computationally efficient, unlike their classical counterparts. These posse several difficulties especially when using power limited hardware such as mobile devices, therefore, discouraging the application of sparsity techniques in such scenarios. In this paper, we construct orthogonal and nonorthogonal dictionaries that are factorized as a product of a few basic transfo...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
In the field of sparse representations, the overcomplete dictionary learning problem is of crucial i...
Dictionary learning is a branch of signal processing and machine learning that aims at finding a fra...
In this paper we propose a dictionary learning method that builds an over complete dictionary that i...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
In this letter we give efficient solutions to the construction of structured dictionaries for sparse...
International audienceDictionary learning aims at finding a frame (called dictionary) in which train...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
In recent years, how to learn a dictionary from input im-ages for sparse modelling has been one very...
International audienceDictionary learning is a branch of signal processing and machine learning that...
The sparsity of signals and images in a certain transform domain or dictionary has been exploited in...
In recent years, sparse signal modeling, especially using the synthesis dictionary model, has receiv...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
In the field of sparse representations, the overcomplete dictionary learning problem is of crucial i...
Dictionary learning is a branch of signal processing and machine learning that aims at finding a fra...
In this paper we propose a dictionary learning method that builds an over complete dictionary that i...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Abstract — A powerful approach to sparse representation, dic-tionary learning consists in finding a ...
In this letter we give efficient solutions to the construction of structured dictionaries for sparse...
International audienceDictionary learning aims at finding a frame (called dictionary) in which train...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
In recent years, how to learn a dictionary from input im-ages for sparse modelling has been one very...
International audienceDictionary learning is a branch of signal processing and machine learning that...
The sparsity of signals and images in a certain transform domain or dictionary has been exploited in...
In recent years, sparse signal modeling, especially using the synthesis dictionary model, has receiv...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
In the field of sparse representations, the overcomplete dictionary learning problem is of crucial i...