| Literature DB >> 29769576 |
Thomas De Schryver1,2,3, Manuel Dierick1,2,3, Marjolein Heyndrickx1,2, Jeroen Van Stappen4,2, Marijn A Boone4,2,3, Luc Van Hoorebeke1,2, Matthieu N Boone5,6.
Abstract
This work presents a framework to exploit the synergy between Digital Volume Correlation (DVC) and iterative CT reconstruction to enhance the quality of high-resolution dynamic X-ray CT (4D-µCT) and obtain quantitative results from the acquired dataset in the form of 3D strain maps which can be directly correlated to the material properties. Furthermore, we show that the developed framework is capable of strongly reducing motion artifacts even in a dataset containing a single 360° rotation.Entities:
Year: 2018 PMID: 29769576 PMCID: PMC5955979 DOI: 10.1038/s41598-018-25916-5
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Imaging parameters for the experimental data.
| Experiment 1 | Experiment 2 | |
|---|---|---|
| Tube voltage (kV) | 90 | 90 |
| Tube power (W) | 19.8 | 16 |
| Detector pixel size ( | 200 | 200 |
| Detector width & height (pixels) | 658 × 656 | 658 × 656 |
| Source-object distance (mm) | 73.4 | 71.4 |
| Source-detector distance (mm) | 367.02 | 367.02 |
| Magnified pixel pitch ( | 40 | 39 |
Figure 1Scoring curves for Demons, phase flow and B-spline registration for the aluminium foam acquisition. The B-spline method performs best overall, providing qualitative registrations up to very high deformations as indicated by its flat maximum.
Figure 2Three cases showing the impact of a motion corrected reconstructions of compressed aluminium foam. From left to right: a standard single rotation reconstruction with 700 projections (case 1), a reconstruction with 700 projections spread over 14 rotations (case 2) and a reconstruction with 2800 projections spread over 14 rotations (case 3). The difference images are referred to the uncorrected reconstruction of case 1. The size of the visualized area is approx. 1.5 × 1.5 cm2.
Figure 3The angular ranges of the sub-reconstructions used for motion correction of a single rotation μCT scan.
Figure 4Reconstruction of a single rotation acquisition with and without motion correction by registering the short scan sub-acquisitions. Most of the motion artefacts are eliminated, yet for the 16 min acquisition an aliasing artefact arises. This can be attributed to the bottom plate of the compression stage that gradually enters the registration window. Most registation techniques have difficulties to handle this sudden introduction of extra image features. The size of the visualized area is approx. 1.5 × 1.3 cm2.
Figure 5Multiple iterations in a motion corrected reconstruction of a single rotation acquisition. These images show the incremental differences between the results of the current and the previous iterations. By performing multiple rotations the image quality is not significantly improved. Moreover, the temporal aliasing artefacts in the 16 min acquisition are amplified persistently throughout several iterations. The size of the visualized area is approx. 1.5 × 1.3 cm2.