ABSTRACT
Accurate knowledge of the acquisition geometry of a CT scanning system is key for high quality tomographic imaging. Unfortunately, in modular X-ray CT setups, geometry misalignment occurs each time the setup is changed, which calls for an efficient calibration procedure to correct for geometric inaccuracies. Although many studies have been dealing with the calibration of X-ray CT systems, these are often specifically designed for one setup and/or expensive.
In this work, we explore the possibilities of a low-cost, easy-to-build, and modular phantom, constructed from LEGO bricks, which serves as a structure to hold small metal beads, for geometric calibration of a tomographic X-ray system. By estimating the bead coordinates using deep learning, and minimizing center-to-center distances of the metal beads between measured and reference projection data, geometry parameters are derived. With simulated as well as real experiments, it is shown that the LEGO phantom can be used to accurately estimate the geometry of a modular X-ray CT system.
Acknowledgements
We would like to acknowledge Wim Huyge for the construction of the rotation stage of the 3D2YMOX system. This work has been supported by the University Research Fund, UAntwerp BOF-GOA 2016 33927, the Research Foundation - Flanders (FWO) SBO project MetroFlex (S004217N), and the European Commission through the INTERREG Vlaanderen Nederland program project SmartLight (0386).
Disclosure statement
No potential conflict of interest was reported by the author(s).