Features based on sparse representation, especially using the synthesis dictionary model, have been heavily exploited in signal processing and computer vision. Many applications such as image and video denoising, inpainting, demosaicing, super-resolution, magnetic resonance imaging (MRI), and computed tomography (CT) reconstruction have been shown to benefit from adaptive sparse signal modeling. However, synthesis dictionary learning typically involves expensive sparse coding and learning steps. Recently, sparsifying transform learning received interest for its cheap computation and its optimal updates in the alternating algorithms. Prior works on transform learning have certain limitations, including (1) limited model richness and structur...
Abstract—For promising vision-based video coding on low-quality data, this paper proposes a sparse s...
The works presented in this thesis focus on sparsity in the real world signals, its applications in ...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
In recent years, sparse signal modeling, especially using the synthesis dictionary model, has receiv...
The sparsity of signals and images in a certain transform domain or dictionary has been exploited in...
The sparsity of signals in a certain transform domain or dictionary has been extended in different a...
This paper addresses the learning problem for data-adaptive transform that provides sparse represent...
Compressed sensing (CS) utilizes the sparsity of MR images to enable accurate reconstruction from un...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
Image deconvolution is one of the most frequently encountered inverse problems in imaging. Since nat...
Multidimensional signals contain information of an object in more than one dimension, and usually th...
A major obstacle in computed tomography (CT) is the reduction of harmful x-ray dose while maintaini...
Compressed sensing (CS) utilizes the sparsity of MR images to enable ac-curate reconstruction from u...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
Abstract—For promising vision-based video coding on low-quality data, this paper proposes a sparse s...
The works presented in this thesis focus on sparsity in the real world signals, its applications in ...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...
In recent years, sparse signal modeling, especially using the synthesis dictionary model, has receiv...
The sparsity of signals and images in a certain transform domain or dictionary has been exploited in...
The sparsity of signals in a certain transform domain or dictionary has been extended in different a...
This paper addresses the learning problem for data-adaptive transform that provides sparse represent...
Compressed sensing (CS) utilizes the sparsity of MR images to enable accurate reconstruction from un...
The sparsity of natural signals in transform domains such as the DCT has been heavily exploited in v...
Image deconvolution is one of the most frequently encountered inverse problems in imaging. Since nat...
Multidimensional signals contain information of an object in more than one dimension, and usually th...
A major obstacle in computed tomography (CT) is the reduction of harmful x-ray dose while maintaini...
Compressed sensing (CS) utilizes the sparsity of MR images to enable ac-curate reconstruction from u...
Barner, Kenneth E.Signal sparse representation solves inverse problems to find succinct expressions ...
This dissertation focuses on sparse representation and dictionary learning, with three relative topi...
Abstract—For promising vision-based video coding on low-quality data, this paper proposes a sparse s...
The works presented in this thesis focus on sparsity in the real world signals, its applications in ...
Sparse representation has been studied extensively in the past decade in a variety of applications, ...