Both interclass variances and intraclass similarities are crucial for improving the classification performance of discriminative dictionary learning (DDL) algorithms. However, existing DDL methods often ignore the combination between the interclass and intraclass properties of dictionary atoms and coding coefficients. To address this problem, in this paper, we propose a discriminative Fisher embedding dictionary learning (DFEDL) algorithm that simultaneously establishes Fisher embedding models on learned atoms and coefficients. Specifically, we first construct a discriminative Fisher atom embedding model by exploring the Fisher criterion of the atoms, which encourages the atoms of the same class to reconstruct the corresponding training sam...
Analysis dictionary learning (ADL) has been successfully applied to a variety of learning systems. H...
Dictionary learning for sparse coding has been widely applied in the field of computer vision and ha...
It is now well established that sparse representation models are working effectively for many visual...
The employed dictionary plays an important role in sparse representation or sparse coding based imag...
The employed dictionary plays an important role in sparse representation or sparse coding based imag...
In the last decade, traditional dictionary learning methods have been successfully applied to variou...
Dictionary learning (DL) has now become an important feature learning technique that owns state-of-t...
Discriminative dictionary learning (DL) has been widely studied in various pattern classification pr...
We propose a novel low-dimensional discriminative dictionary learning approach for multi-class class...
We propose a novel low-dimensional discriminative dictionary learning approach for multi-class class...
Recently, dictionary learning has become an active topic. However, the majority of dictionary learni...
In this paper, we propose a novel Fisher discriminant unsupervised dictionary learning (FD-UDL) appr...
Discriminative Dictionary Learning (DL) methods have been widely advocated for image classification ...
© 2014 IEEE. Dictionary learning (DL) for sparse coding has shown promising results in classificatio...
Dictionary learning (DL) has been successfully applied to various pattern classification tasks in re...
Analysis dictionary learning (ADL) has been successfully applied to a variety of learning systems. H...
Dictionary learning for sparse coding has been widely applied in the field of computer vision and ha...
It is now well established that sparse representation models are working effectively for many visual...
The employed dictionary plays an important role in sparse representation or sparse coding based imag...
The employed dictionary plays an important role in sparse representation or sparse coding based imag...
In the last decade, traditional dictionary learning methods have been successfully applied to variou...
Dictionary learning (DL) has now become an important feature learning technique that owns state-of-t...
Discriminative dictionary learning (DL) has been widely studied in various pattern classification pr...
We propose a novel low-dimensional discriminative dictionary learning approach for multi-class class...
We propose a novel low-dimensional discriminative dictionary learning approach for multi-class class...
Recently, dictionary learning has become an active topic. However, the majority of dictionary learni...
In this paper, we propose a novel Fisher discriminant unsupervised dictionary learning (FD-UDL) appr...
Discriminative Dictionary Learning (DL) methods have been widely advocated for image classification ...
© 2014 IEEE. Dictionary learning (DL) for sparse coding has shown promising results in classificatio...
Dictionary learning (DL) has been successfully applied to various pattern classification tasks in re...
Analysis dictionary learning (ADL) has been successfully applied to a variety of learning systems. H...
Dictionary learning for sparse coding has been widely applied in the field of computer vision and ha...
It is now well established that sparse representation models are working effectively for many visual...