Dictionary Learning (DL) plays a crucial role in numerous machine learning tasks. It targets at finding the dictionary over which the training set admits a maximally sparse representation. Most existing DL algorithms are based on solving an optimization problem, where the noise variance and sparsity level should be known as the prior knowledge. However, in practice applications, it is difficult to obtain these knowledge. Thus, non-parametric Bayesian DL has recently received much attention of researchers due to its adaptability and effectiveness. Although many hierarchical priors have been used to promote the sparsity of the representation in non-parametric Bayesian DL, the problem of redundancy for the dictionary is still overlooked, which...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary i...
Dictionary learning (DL) is a well-researched problem, where the goal is to learn a dictionary from ...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image represe...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
Revised version. Accepted to IEEE Trans. Signal ProcessingThis paper addresses the problem of identi...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Bayesian non-parametric dictionary learning has become popular in computer vision applications due t...
Given a redundant dictionary of basis vectors (or atoms), our goal is to find maximally sparse repre...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary i...
Dictionary learning (DL) is a well-researched problem, where the goal is to learn a dictionary from ...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
Non-parametric Bayesian techniques are considered for learning dictionaries for sparse image represe...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
Revised version. Accepted to IEEE Trans. Signal ProcessingThis paper addresses the problem of identi...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Bayesian non-parametric dictionary learning has become popular in computer vision applications due t...
Given a redundant dictionary of basis vectors (or atoms), our goal is to find maximally sparse repre...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary i...