Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to obtain maximum likelihood and maximum a posteriori dictionary estimates based on the use of Bayesian models with concave/Schur-concave (CSC) negative log priors. Such priors are appropriate for obtaining sparse representations of environmental signals within an appropriately chosen (environmentally matched) dictionary. The elements of the dictionary can be interpreted as concepts, features, or words capable of succinct expression of events encountered in the environment (the source of the measured signals). This is a generalization of vector quantization in that one is interested in a description involving a few dictionary entries (the proverbi...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
Dictionary learning (DL) is a well-researched problem, where the goal is to learn a dictionary from ...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
Abstract. Recent successes in the use of sparse coding for many com-puter vision applications have t...
A popular approach within the signal processing and machine learning communities consists in mod-ell...
Abstract. Images can be coded accurately using a sparse set of vec-tors from an overcomplete diction...
We propose a new algorithm for the design of overcomplete dictionaries for sparse coding, Neural Gas...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
This paper presents the first theoretical results showing that stable identification of overcomplete...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
Dictionary learning (DL) is a well-researched problem, where the goal is to learn a dictionary from ...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
Abstract. Recent successes in the use of sparse coding for many com-puter vision applications have t...
A popular approach within the signal processing and machine learning communities consists in mod-ell...
Abstract. Images can be coded accurately using a sparse set of vec-tors from an overcomplete diction...
We propose a new algorithm for the design of overcomplete dictionaries for sparse coding, Neural Gas...
We develop an efficient learning framework to construct signal dictionaries for sparse representatio...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
This paper presents the first theoretical results showing that stable identification of overcomplete...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
This is a substantially revised version of a first draft that appeared as a preprint titled "Local s...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...