Medical image reconstruction by total variation minimization is a newly developed area in computed tomography (CT). In compressed sensing literature, it hasbeen shown that signals with sparse representations in an orthonormal basis may be reconstructed via l1-minimization. Furthermore, if an image can be approximately modeled to be piecewise constant, then its gradient is sparse. The application of l1-minimization to a sparse gradient, known as total variation minimization, may then be used to recover the image. In this paper, the steepest descent method is employed to update the approximation of the image. We propose a way to estimate an optimal step size so that the total variation is minimized. A new minimization problem is also proposed...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
In this paper, we consider a regularized least squares problem subject to convex constraints. Our al...
Computed tomography (CT) has been widely applied in medical imaging and industry for over decades. C...
The constrained total variation minimization has been developed successfully for image reconstructio...
The aim of this paper is to investigate how the choice of the sampling basis affects the reconstruct...
The sparse vector solutions for an underdetermined system of linear equations Ax = b have many appli...
The sparse vector solutions for an underdetermined system of linear equations Ax=b have many applica...
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing...
Abstract—Total-variation (TV)-based CT image reconstruction has shown experimentally to be capable o...
The sparse solutions of an underdetermined linear system Ax = b under certain condition can be obtai...
In this talk, we will introduce a a generalized l1 greedy algorithm via total variation minimization...
The few-view image reconstruction problem is one of the challenging research areas in industrial Com...
With the development of the compressive sensing theory, the image reconstruction from the projection...
In practical applications of computed tomography (CT) imaging, due to the risk of high radiation dos...
In computed tomography (CT) there are many situations where reconstruction may need to be performed ...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
In this paper, we consider a regularized least squares problem subject to convex constraints. Our al...
Computed tomography (CT) has been widely applied in medical imaging and industry for over decades. C...
The constrained total variation minimization has been developed successfully for image reconstructio...
The aim of this paper is to investigate how the choice of the sampling basis affects the reconstruct...
The sparse vector solutions for an underdetermined system of linear equations Ax = b have many appli...
The sparse vector solutions for an underdetermined system of linear equations Ax=b have many applica...
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing...
Abstract—Total-variation (TV)-based CT image reconstruction has shown experimentally to be capable o...
The sparse solutions of an underdetermined linear system Ax = b under certain condition can be obtai...
In this talk, we will introduce a a generalized l1 greedy algorithm via total variation minimization...
The few-view image reconstruction problem is one of the challenging research areas in industrial Com...
With the development of the compressive sensing theory, the image reconstruction from the projection...
In practical applications of computed tomography (CT) imaging, due to the risk of high radiation dos...
In computed tomography (CT) there are many situations where reconstruction may need to be performed ...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
In this paper, we consider a regularized least squares problem subject to convex constraints. Our al...
Computed tomography (CT) has been widely applied in medical imaging and industry for over decades. C...