We study the impact of sampling theorems on the fidelity of sparse image reconstruction on the sphere. We discuss how a reduction in the number of samples required to represent all information content of a band-limited signal acts to improve the fidelity of sparse image reconstruction, through both the dimensionality and sparsity of signals. To demonstrate this result, we consider a simple inpainting problem on the sphere and consider images sparse in the magnitude of their gradient. We develop a framework for total variation inpainting on the sphere, including fast methods to render the inpainting problem computationally feasible at high resolution. Recently a new sampling theorem on the sphere was developed, reducing the required number o...
This paper explores numerically the efficiency of $\lun$ minimization for the recovery of sparse sig...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
This paper proposes an extension of compressed sensing that allows to express the sparsity prior...
Abstract — We study the impact of sampling theorems on the fidelity of sparse image reconstruction o...
Abstract—We study the impact of sampling theorems on the fidelity of sparse image reconstruction on ...
A new sampling theorem on the sphere has been developed recently, reducing the number of samples req...
We discuss a novel sampling theorem on the sphere developed by McEwen & Wiaux recently through an as...
A sampling theorem on the sphere has been developed recently, requiring half as many samples as alte...
We develop techniques to solve ill-posed inverse problems on the sphere by sparse regularization, ex...
We develop a novel sampling theorem on the sphere and corresponding fast algorithms by associating t...
We develop a novel sampling theorem on the sphere and corresponding fast algorithms by associating t...
In this work, we carry out the comparative analysis of the geometrical properties of the sampling sc...
This paper addresses the problem of generating a super-resolution (SR) image from a single low-resol...
Image-based rendering (IBR) generates novel views from images instead of 3D models. It can be consid...
This paper explores numerically the efficiency of $\lun$ minimization for the recovery of sparse sig...
This paper explores numerically the efficiency of $\lun$ minimization for the recovery of sparse sig...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
This paper proposes an extension of compressed sensing that allows to express the sparsity prior...
Abstract — We study the impact of sampling theorems on the fidelity of sparse image reconstruction o...
Abstract—We study the impact of sampling theorems on the fidelity of sparse image reconstruction on ...
A new sampling theorem on the sphere has been developed recently, reducing the number of samples req...
We discuss a novel sampling theorem on the sphere developed by McEwen & Wiaux recently through an as...
A sampling theorem on the sphere has been developed recently, requiring half as many samples as alte...
We develop techniques to solve ill-posed inverse problems on the sphere by sparse regularization, ex...
We develop a novel sampling theorem on the sphere and corresponding fast algorithms by associating t...
We develop a novel sampling theorem on the sphere and corresponding fast algorithms by associating t...
In this work, we carry out the comparative analysis of the geometrical properties of the sampling sc...
This paper addresses the problem of generating a super-resolution (SR) image from a single low-resol...
Image-based rendering (IBR) generates novel views from images instead of 3D models. It can be consid...
This paper explores numerically the efficiency of $\lun$ minimization for the recovery of sparse sig...
This paper explores numerically the efficiency of $\lun$ minimization for the recovery of sparse sig...
The state of the art in sampling theory now contains several theorems for signals that are non-bandl...
This paper proposes an extension of compressed sensing that allows to express the sparsity prior...