Publisher Copyright: © IEEEConvolutional sparse coding improves on the standard sparse approximation by incorporating a global shift-invariant model. The most efficient convolutional sparse coding methods are based on the alternating direction method of multipliers and the convolution theorem. The only major difference between these methods is how they approach a convolutional least-squares fitting subproblem. In this letter, we present a novel solution for this subproblem, which improves the computational efficiency of the existing algorithms. The same approach is also used to develop an efficient dictionary learning method. In addition, we propose a novel algorithm for convolutional sparse coding with a constraint on the approximation err...
Convolutional sparse coding (CSC) can model local connections between image content and reduce the c...
Sparse coding is a basic task in many fields including signal processing, neuroscience and machine l...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Sparse coding has become an increasingly popular method in learning and vision for a variety of clas...
Abstract Sparse and convolutional constraints form a natural prior for many optimization problems th...
Sparse coding has become an increasingly popular method in learning and vision for a variety of clas...
The sparse approximation model, also known as the sparse coding model, represents signals as linear ...
When applying sparse representation techniques to images, the standard approach is to independently ...
Dictionary learning for sparse coding has been successfully used in different domains, however, has ...
Structured sparse learning has become a popular and mature research field. Among all structured spar...
International audienceIn this paper an extension of the sparse decomposition problem is considered a...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Abstract. Recently, sparse coding has been widely used in many ap-plications ranging from image reco...
The sparse coding is approximation/representation of signals with the minimum number of coefficients...
Sparse coding is a crucial subroutine in algorithms for various signal processing, deep learning, an...
Convolutional sparse coding (CSC) can model local connections between image content and reduce the c...
Sparse coding is a basic task in many fields including signal processing, neuroscience and machine l...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Sparse coding has become an increasingly popular method in learning and vision for a variety of clas...
Abstract Sparse and convolutional constraints form a natural prior for many optimization problems th...
Sparse coding has become an increasingly popular method in learning and vision for a variety of clas...
The sparse approximation model, also known as the sparse coding model, represents signals as linear ...
When applying sparse representation techniques to images, the standard approach is to independently ...
Dictionary learning for sparse coding has been successfully used in different domains, however, has ...
Structured sparse learning has become a popular and mature research field. Among all structured spar...
International audienceIn this paper an extension of the sparse decomposition problem is considered a...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Abstract. Recently, sparse coding has been widely used in many ap-plications ranging from image reco...
The sparse coding is approximation/representation of signals with the minimum number of coefficients...
Sparse coding is a crucial subroutine in algorithms for various signal processing, deep learning, an...
Convolutional sparse coding (CSC) can model local connections between image content and reduce the c...
Sparse coding is a basic task in many fields including signal processing, neuroscience and machine l...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...