Use of fast realistic simulations on GPU to extract CAD models from microtomographic data in the presence of strong CT artefacts
Research output: Contribution to journal › Article › peer-review
Electronic versions
Documents
- Preprint submitted to Elsevier
Accepted author manuscript, 13.8 MB, PDF document
Licence: CC BY-NC-ND Show licence
DOI
The presence of strong imaging artefacts in microtomographic X-ray data makes the CAD modelling process difficult to carry out. As an alternative to traditional image segmentation techniques, we propose to register the CAD models by deploying a realistic X-ray simulation on GPU in an optimisation framework. A user study was also conducted to compare the measurements made manually by a cohort of volunteers and those produced with our framework. Our implementation relies on open source software only. We numerically modelled the real experiment, taking into account geometrical properties as well as beam hardening, impulse response of the detector, phase contrast, and photon noise. Parameters of the overall model are then optimised so that X-ray projections of the registered the CAD models match the projections from an actual experiment. It appeared that manual measurements can be variable and subject to bias whereas our framework produced more reliable results. The features seen in the real CT image, including artefacts, were accurately replicated in the CT image reconstructed from the simulated data after registration: (i) linear attenuation coefficients are comparable for all the materials, (ii) geometrical properties are accurately recovered, and (iii) simulated images reproduce observed experimental artefacts. We showed that the choice of objective function is crucial to produce high fidelity results. We also demonstrated how to automatically produce CAD models as an optimisation problem, producing a high cross-correlation between the experimental CT slice and the simulated CT slice. These results pave the way towards the use of fast realistic simulation for accurate CAD modelling in tomographic X-ray data.
Keywords
- Computed tomography, X-rays, Numerical simulation, ptimisation, Computer aided analysis, High performance computing, Evolutionary computation
Original language | English |
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Pages (from-to) | 110-125 |
Journal | Precision Engineering |
Volume | 74 |
Early online date | 29 Oct 2021 |
DOIs | |
Publication status | Published - 1 Mar 2022 |
Research outputs (8)
- Published
Simulation of X-ray projections on GPU: benchmarking gVirtualXray with clinically realistic phantoms
Research output: Contribution to journal › Article › peer-review
- Published
Experimental microCT and high-fidelity simulations: Towards quantitative imaging in the case of strong artefacts
Research output: Contribution to conference › Abstract › peer-review
- Published
3D-2D Registration using X-ray Simulation and CMA-ES
Research output: Contribution to conference › Paper › peer-review
Prof. activities and awards (1)
Optimisation and Simulation of X-ray images: Automatic registration of surface models on synchrotron microtomography data
Activity: Talk or presentation › Oral presentation
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