Proefschrift
Faster X-ray Computed Tomography in Real-World Dynamic Applications
This dissertation investigates how the efficiency of Computed Tomography (CT) can be improved for dynamic scientific and industrial applications.
- Auteur
- A.B.M. Graas
- Datum
- 04 februari 2026
- Links
- Thesis in Leiden Repository
Examples of such applications are (i) rapidly moving processes, in which each instant in time effectively constitutes an individual reconstruction problem; (ii) iterative and learning-based algorithms, which generally demand more computational resources than conventional algorithms; and (iii) applications that employ CT repetitively, for example for detecting production defects on conveyor belts. This thesis comprises four chapters, each corresponding to a research project and publication. Chapter 2 discusses a set-up for high-speed tomography of fluidized beds. Chapter 3 presents an on-line deep learning method for real-time tomography. Chapter 4 introduces a new software package that enables tailored implementations of CT algorithms on graphics processing units (GPUs). Chapter 5 lastly pioneers a self-supervised deep learning method for noise removal of radiographs in scenarios where neither ground truths nor secondary noisy examples can be acquired.