Recently, an extended family of power-divergence measures with two parameters was proposed together with an iterative reconstruction algorithm based on minimization of the divergence measure as an objective function of the reconstructed images for computed tomography. Numerical experiments on the reconstruction algorithm illustrated that it has advantages over conventional iterative methods from noisy measured projections by setting appropriate values of the parameters. In this paper, we present a novel neural network architecture for determining the most appropriate parameters depending on the noise level of the projections and the shape of the target image. Through experiments, we show that the algorithm of the architecture, which has an ...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Tomography is a powerful technique to non-destructively determine the interior structure of an objec...
Recent advances in deep learning for tomographic reconstructions have shown great potential to creat...
The problem of tomographic image reconstruction can be reduced to an optimization problem of finding...
Abstract—We propose a supervised machine learning approach for boosting existing signal and image re...
We introduce a method for the fast estimation of data-adapted, spatially and temporally dependent re...
In this article, we introduce three different strategies of tomographic reconstruction based on deep...
Many algorithms and methods have been proposed for inverse image processing applications, such as su...
This paper addresses the problem of image reconstruction for region-of-interest (ROI) computed tomog...
This work presents an empirical study on the design and training of iterative neural networks for im...
Image reconstruction from a small number of projections is a challenging problem in tomography. Adva...
In discrete tomography sometimes it is necessary to reduce the number of projections used for recons...
A new neural network approach to image reconstruction from projections considering the parallel geom...
Iterative reconstruction of density pixel images from measured projections in computed tomography ha...
The computed tomography allows to reconstruct the inner morphological structure of an object without...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Tomography is a powerful technique to non-destructively determine the interior structure of an objec...
Recent advances in deep learning for tomographic reconstructions have shown great potential to creat...
The problem of tomographic image reconstruction can be reduced to an optimization problem of finding...
Abstract—We propose a supervised machine learning approach for boosting existing signal and image re...
We introduce a method for the fast estimation of data-adapted, spatially and temporally dependent re...
In this article, we introduce three different strategies of tomographic reconstruction based on deep...
Many algorithms and methods have been proposed for inverse image processing applications, such as su...
This paper addresses the problem of image reconstruction for region-of-interest (ROI) computed tomog...
This work presents an empirical study on the design and training of iterative neural networks for im...
Image reconstruction from a small number of projections is a challenging problem in tomography. Adva...
In discrete tomography sometimes it is necessary to reduce the number of projections used for recons...
A new neural network approach to image reconstruction from projections considering the parallel geom...
Iterative reconstruction of density pixel images from measured projections in computed tomography ha...
The computed tomography allows to reconstruct the inner morphological structure of an object without...
We present a lightweight and scalable artificial neural network architecture which is used to recons...
Tomography is a powerful technique to non-destructively determine the interior structure of an objec...
Recent advances in deep learning for tomographic reconstructions have shown great potential to creat...