Dictionary learning problem has become an active topic for decades. Most existing learning methods train the dictionary to adapt to a particular class of signals. But as the number of the dictionary atoms is increased to represent the signals much more sparsely, the coherence between the atoms becomes higher. According to the greedy and compressed sensing theories, this goes against the implementation of sparse coding. In this paper, a novel approach is proposed to learn the dictionary that minimizes the sparse representation error according to the training signals with the coherence taken into consideration. The coherence is constrained by making the Gram matrix of the desired dictionary approximate to an identity matrix of proper dimensio...
This paper proposes a dictionary learning framework that combines the proposed block/group (BGSC) or...
The sparse coding is approximation/representation of signals with the minimum number of coefficients...
We consider the extension of the greedy adaptive dictionary learning algorithm that we introduced pr...
Optimizing the mutual coherence of a learned dictionary plays an important role in sparse representa...
This article deals with learning dictionaries for sparse approximation whose atoms are both adapted ...
Abstract. Recently, sparse coding has been widely used in many ap-plications ranging from image reco...
During the past decade, sparse representation has attracted much attention in the signal processing ...
International audienceIn dictionary learning, a desirable property for the dictionary is to be of lo...
Recent years have witnessed a growing interest in the sparse representation problem. Prior work demo...
Recent years have witnessed a growing interest in the sparse representation problem. Prior work demo...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
For dictionary-based decompositions of certain types, it has been observed that there might be a lin...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
Sparse signal representations based on linear combinations of learned atomshave been used to obtain ...
This paper proposes a dictionary learning framework that combines the proposed block/group (BGSC) or...
The sparse coding is approximation/representation of signals with the minimum number of coefficients...
We consider the extension of the greedy adaptive dictionary learning algorithm that we introduced pr...
Optimizing the mutual coherence of a learned dictionary plays an important role in sparse representa...
This article deals with learning dictionaries for sparse approximation whose atoms are both adapted ...
Abstract. Recently, sparse coding has been widely used in many ap-plications ranging from image reco...
During the past decade, sparse representation has attracted much attention in the signal processing ...
International audienceIn dictionary learning, a desirable property for the dictionary is to be of lo...
Recent years have witnessed a growing interest in the sparse representation problem. Prior work demo...
Recent years have witnessed a growing interest in the sparse representation problem. Prior work demo...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
For dictionary-based decompositions of certain types, it has been observed that there might be a lin...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
Sparse signal representations based on linear combinations of learned atomshave been used to obtain ...
This paper proposes a dictionary learning framework that combines the proposed block/group (BGSC) or...
The sparse coding is approximation/representation of signals with the minimum number of coefficients...
We consider the extension of the greedy adaptive dictionary learning algorithm that we introduced pr...