We present a locality preserving K-SVD (LP-KSVD) algorithm for joint dictionary and classifier learning, and further incorporate kernel into our framework. In LP-KSVD, we construct a locality preserving term based on the relations between input samples and dictionary atoms, and introduce the locality via nearest neighborhood to enforce the locality of representation. Motivated by the fact that locality-related methods works better in a more discriminative and separable space, we map the original feature space to the kernel space, where samples of different classes become more separable. Experimental results show the proposed approach has strong discrimination power and is comparable or outperforms some state-of-the-art approaches on public ...
The problem of training a dictionary for sparse representations from a given dataset is receiving a ...
AbstractSparse representation classification (SRC) is being widely investigated on hyperspectral ima...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Hosseini B, Hammer B. Confident Kernel Sparse Coding and Dictionary Learning. In: 2018 IEEE Interna...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
International audienceShift-invariant dictionaries are generated by taking all the possible shifts o...
Abstract Sparse representation has been widely used in machine learning, signal processing and commu...
Shift-invariant dictionaries are generated by taking all the possible shifts of a few short patterns...
Recent dictionary training algorithms for sparse representation like K-SVD, MOD, and their variation...
We propose a joint subspace recovery and enhanced locality-based robust flexible label consistent di...
Research). This paper was published in Journal of Machine Learning Research and is made available as...
We consider the problem of feature extraction for "multimodal" and "mixmodal" da...
We develop a new dictionary learning algorithm called the l(1)-K-svp, by minimizing the l(1) distort...
Abstract. Recent successes in the use of sparse coding for many com-puter vision applications have t...
Sparse dictionary learning has attracted enormous interest in image processing and data representati...
The problem of training a dictionary for sparse representations from a given dataset is receiving a ...
AbstractSparse representation classification (SRC) is being widely investigated on hyperspectral ima...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Hosseini B, Hammer B. Confident Kernel Sparse Coding and Dictionary Learning. In: 2018 IEEE Interna...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
International audienceShift-invariant dictionaries are generated by taking all the possible shifts o...
Abstract Sparse representation has been widely used in machine learning, signal processing and commu...
Shift-invariant dictionaries are generated by taking all the possible shifts of a few short patterns...
Recent dictionary training algorithms for sparse representation like K-SVD, MOD, and their variation...
We propose a joint subspace recovery and enhanced locality-based robust flexible label consistent di...
Research). This paper was published in Journal of Machine Learning Research and is made available as...
We consider the problem of feature extraction for "multimodal" and "mixmodal" da...
We develop a new dictionary learning algorithm called the l(1)-K-svp, by minimizing the l(1) distort...
Abstract. Recent successes in the use of sparse coding for many com-puter vision applications have t...
Sparse dictionary learning has attracted enormous interest in image processing and data representati...
The problem of training a dictionary for sparse representations from a given dataset is receiving a ...
AbstractSparse representation classification (SRC) is being widely investigated on hyperspectral ima...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...