We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited data. The problem is modeled as a nonnegatively constrained minimization problem of very large size. In order to obtain an acceptable image in short time, we propose a scaled gradient projection method, accelerated by exploiting a suitable scaling matrix and efficient rules for the choice of the step-length. In particular, we select the step-length either by alternating Barzilai-Borwein rules or by exploiting a limited number of back gradients for approximating second-order information. Numerical results on a 3D Shepp-Logan phantom are presented and discussed
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
Abstract—Total-variation (TV)-based CT image reconstruction has shown experimentally to be capable o...
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
With the development of the compressive sensing theory, the image reconstruction from the projection...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
Abstract—Total-variation (TV)-based CT image reconstruction has shown experimentally to be capable o...
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We consider in this paper the problem of reconstructing 3D Computed Tomography images from limited d...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
We propose a scaled gradient projection algorithm for the reconstruction of 3D X-ray tomographic ima...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
With the development of the compressive sensing theory, the image reconstruction from the projection...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
Abstract—Total-variation (TV)-based CT image reconstruction has shown experimentally to be capable o...
Exploiting sparsity in the image gradient magnitude has proved to be an effective means for reducing...