An online dictionary learning algorithm for kernel sparse representation is developed in the current paper. In this framework, the input signal nonlinearly mapped into the feature space is sparsely represented based on a virtual dictionary in the same space. At any instant, the dictionary is updated in two steps. In the first step, the input signal samples are sparsely represented in the feature space, using the dictionary that has been updated based on the previous data. In the second step, the dictionary is updated. In this paper, a novel recursive dictionary update algorithm is derived, based on the recursive least squares (RLS) approach. This algorithm gradually updates the dictionary, upon receiving one or a mini-batch of training samp...
Kernel methods are widely used in nonlinear modeling applications. In this paper, a robust informati...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
We consider the dictionary learning problem in sparse rep-resentations based on an analysis model wi...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Hosseini B, Hammer B. Confident Kernel Sparse Coding and Dictionary Learning. In: 2018 IEEE Interna...
Kernel methods are popular nonparametric modeling tools in machine learning. The Mercer kernel funct...
Abstract. A new dictionary learning method for exact sparse repre-sentation is presented in this pap...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
During the past decade, sparse representation has attracted much attention in the signal processing ...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
Kernel methods are widely used in nonlinear modeling applications. In this paper, a robust informati...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
We consider the dictionary learning problem in sparse rep-resentations based on an analysis model wi...
In this paper, we proposed a recurrent kernel recursive least square (RLS) algorithm for online lear...
Hosseini B, Hammer B. Confident Kernel Sparse Coding and Dictionary Learning. In: 2018 IEEE Interna...
Kernel methods are popular nonparametric modeling tools in machine learning. The Mercer kernel funct...
Abstract. A new dictionary learning method for exact sparse repre-sentation is presented in this pap...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
In the sparse representation model, the design of overcomplete dictionaries plays a key role for the...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
During the past decade, sparse representation has attracted much attention in the signal processing ...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
Kernel methods are widely used in nonlinear modeling applications. In this paper, a robust informati...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
By solving a linear inverse problem under a sparsity constraint, one can successfully recover the co...