In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel algorithm is proposed by adapting the simultaneous codeword optimization (SimCO) algorithm, based on the sparse synthesis model, to the sparse analysis model. This algorithm assumes that the analysis dictionary contains unit ℓ2-norm atoms and learns the dictionary by optimization on manifolds. This framework allows multiple dictionary atoms to be updated simultaneously in each iteration. However, similar to several existing analysis dictionary learning algorithms, dictionaries learned by the proposed algorithm may contain similar atoms, leading to a degenerate (coherent) dictionary. To address this problem, we also consider restricting the cohe...
During the past decade, sparse representation has attracted much attention in the signal processing ...
Dictionary learning algorithms, aiming to learn a sparsifying transform from train-ing data, are oft...
Dictionary learning aims to adapt elementary codewords di-rectly from training data so that each tra...
In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel al...
Abstract—In this paper, we consider the dictionary learning problem for the sparse analysis model. A...
In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel al...
We consider the dictionary learning problem for the analysis model based sparse representation. A no...
We consider the dictionary learning problem for the analy-sis model based sparse representation. A n...
We consider the dictionary learning problem for the analy-sis model based sparse representation. A n...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Abstract—We consider the data-driven dictionary learning problem. The goal is to seek an over-comple...
We consider the data-driven dictionary learning problem. The goal is to seek an over-complete dictio...
Dictionary learning aims to adapt elementary codewords directly from training data so that each trai...
Abstract—We consider the data-driven dictionary learning problem. The goal is to seek an over-comple...
During the past decade, sparse representation has attracted much attention in the signal processing ...
Dictionary learning algorithms, aiming to learn a sparsifying transform from train-ing data, are oft...
Dictionary learning aims to adapt elementary codewords di-rectly from training data so that each tra...
In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel al...
Abstract—In this paper, we consider the dictionary learning problem for the sparse analysis model. A...
In this paper, we consider the dictionary learning problem for the sparse analysis model. A novel al...
We consider the dictionary learning problem for the analysis model based sparse representation. A no...
We consider the dictionary learning problem for the analy-sis model based sparse representation. A n...
We consider the dictionary learning problem for the analy-sis model based sparse representation. A n...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Abstract—We consider the data-driven dictionary learning problem. The goal is to seek an over-comple...
We consider the data-driven dictionary learning problem. The goal is to seek an over-complete dictio...
Dictionary learning aims to adapt elementary codewords directly from training data so that each trai...
Abstract—We consider the data-driven dictionary learning problem. The goal is to seek an over-comple...
During the past decade, sparse representation has attracted much attention in the signal processing ...
Dictionary learning algorithms, aiming to learn a sparsifying transform from train-ing data, are oft...
Dictionary learning aims to adapt elementary codewords di-rectly from training data so that each tra...