Abstract This paper extends the recently proposed and theoretically justified iterative thresholding and K residual means (ITKrM) algorithm to learning dictionaries from incomplete/masked training data (ITKrMM). It further adapts the algorithm to the presence of a low-rank component in the data and provides a strategy for recovering this low-rank component again from incomplete data. Several synthetic experiments show the advantages of incorporating information about the corruption into the algorithm. Further experiments on image data confirm the importance of considering a low-rank component in the data and show that the algorithm compares favourably to its closest dictionary learning counterparts, wKSVD and BPFA, either in terms of comput...
We propose a new algorithm for the design of overcomplete dictionaries for sparse coding, Neural Gas...
Abstract. Various algorithms have been proposed for dictionary learning. Among those for image proce...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary i...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
Abstract. Various algorithms have been proposed for dictionary learning. Among those for image proce...
In recent years, dictionary learning has received more and more attention in the study of face recog...
This paper presents the first theoretical results showing that stable identification of overcomplete...
In recent years, how to learn a dictionary from input im-ages for sparse modelling has been one very...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
We propose a new algorithm for the design of overcomplete dictionaries for sparse coding, Neural Gas...
Abstract. Various algorithms have been proposed for dictionary learning. Among those for image proce...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
In this paper, we investigate dictionary learning (DL) from sparsely corrupted or compressed signals...
International audienceLearning sparsifying dictionaries from a set of training signals has been show...
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary i...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
Abstract. Various algorithms have been proposed for dictionary learning. Among those for image proce...
In recent years, dictionary learning has received more and more attention in the study of face recog...
This paper presents the first theoretical results showing that stable identification of overcomplete...
In recent years, how to learn a dictionary from input im-ages for sparse modelling has been one very...
The idea of learning overcomplete dictionaries based on the paradigm of compressive sensing has foun...
We propose a new algorithm for the design of overcomplete dictionaries for sparse coding, Neural Gas...
Abstract. Various algorithms have been proposed for dictionary learning. Among those for image proce...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...