Inicio  /  Applied Sciences  /  Vol: 9 Par: 12 (2019)  /  Artículo
ARTÍCULO
TITULO

On-the-Fly Machine Learning for Improving Image Resolution in Tomography

Allard A. Hendriksen    
Daniël M. Pelt    
Willem Jan Palenstijn    
Sophia B. Coban and Kees Joost Batenburg    

Resumen

Computationally improving the resolution of laboratory X-ray CT scanners.

 Artículos similares

       
 
David Massegur, Declan Clifford, Andrea Da Ronch, Riccardo Lombardi and Marco Panzeri    
Determining the aero-icing characteristics is key for safety assurance in aviation, but it may be a computationally expensive task. This work presents a framework for the development of low-dimensional models for application to aerofoil icing. The framew... ver más
Revista: Aerospace

 
Dmitry Lukyanenko, Valentin Shinkarev and Anatoly Yagola    
This paper discusses a method for taking into account rounding errors when constructing a stopping criterion for the iterative process in gradient minimization methods. The main aim of this work was to develop methods for improving the quality of the sol... ver más
Revista: Algorithms

 
Shuyi Zhou, Brandon J. Bethel, Wenjin Sun, Yang Zhao, Wenhong Xie and Changming Dong    
Wave forecasts, though integral to ocean engineering activities, are often conducted using computationally expensive and time-consuming numerical models with accuracies that are blunted by numerical-model-inherent limitations. Additionally, artificial ne... ver más

 
Igor Sesin,Roman Bolbakov     Pág. 66 - 73
GPGPU (General Purpose computing for Graphical Processing Units) technology allows one to harness the computational power of a GPU (Graphical Processing Unit) and apply it to practically any computationally-intensive task benefiting from parallelization.... ver más

 
David Goz, Georgios Ieronymakis, Vassilis Papaefstathiou, Nikolaos Dimou, Sara Bertocco, Francesco Simula, Antonio Ragagnin, Luca Tornatore, Igor Coretti and Giuliano Taffoni    
New challenges in Astronomy and Astrophysics (AA) are urging the need for many exceptionally computationally intensive simulations. ?Exascale? (and beyond) computational facilities are mandatory to address the size of theoretical problems and data coming... ver más
Revista: Computation