IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles
X-ray computed tomography (XCT) enables the dimensional measurement and inspection of highly geometrically complex engineering components that are unmeasurable using optical and tactile instruments. Conventional XCT scans use a circular scan trajectory where X-ray projections are acquired with a uni...
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sg-ntu-dr.10356-1727962023-12-23T16:48:04Z IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles Lifton, Joseph John Poon, Keng Yong School of Mechanical and Aerospace Engineering Engineering::Mechanical engineering X-Ray Computed Tomography Dimensional Metrology X-ray computed tomography (XCT) enables the dimensional measurement and inspection of highly geometrically complex engineering components that are unmeasurable using optical and tactile instruments. Conventional XCT scans use a circular scan trajectory where X-ray projections are acquired with a uniform angular spacing; this approach treats all projections as being of equal importance, in practice, some projections contain more object information than others. In this work we capitalize on this concept by intelligently selecting projections with a view to improve the quality of surface models extracted from an XCT data-set. Our approach relies on using a priori object information to select X-ray projections in which the surfaces of the object are aligned with a ray-path, thus ensuring the surface of the object is fully sampled. Results are presented showing that the proposed method is able to reduce CAD comparison errors by 16%, reduce surface form error by 3%, and improve edge contrast by 14% for a machined aluminium component. Agency for Science, Technology and Research (A*STAR) Published version This research is supported by A*STAR under its Industry Alignment Fund-Pre Positioning (IAF-PP), Grant number A20F9a0045. 2023-12-20T05:20:35Z 2023-12-20T05:20:35Z 2023 Journal Article Lifton, J. J. & Poon, K. Y. (2023). IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles. Journal of X-ray Science and Technology, 31(1), 119-129. https://dx.doi.org/10.3233/XST-221280 0895-3996 https://hdl.handle.net/10356/172796 10.3233/XST-221280 36530062 2-s2.0-85147094077 1 31 119 129 en A20F9a0045 Journal of X-ray Science and Technology © 2023 The authors. Published by IOS Press. This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (CC BY-NC 4.0). application/pdf |
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Engineering::Mechanical engineering X-Ray Computed Tomography Dimensional Metrology Lifton, Joseph John Poon, Keng Yong IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
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X-ray computed tomography (XCT) enables the dimensional measurement and inspection of highly geometrically complex engineering components that are unmeasurable using optical and tactile instruments. Conventional XCT scans use a circular scan trajectory where X-ray projections are acquired with a uniform angular spacing; this approach treats all projections as being of equal importance, in practice, some projections contain more object information than others. In this work we capitalize on this concept by intelligently selecting projections with a view to improve the quality of surface models extracted from an XCT data-set. Our approach relies on using a priori object information to select X-ray projections in which the surfaces of the object are aligned with a ray-path, thus ensuring the surface of the object is fully sampled. Results are presented showing that the proposed method is able to reduce CAD comparison errors by 16%, reduce surface form error by 3%, and improve edge contrast by 14% for a machined aluminium component. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Lifton, Joseph John Poon, Keng Yong |
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Article |
author |
Lifton, Joseph John Poon, Keng Yong |
author_sort |
Lifton, Joseph John |
title |
IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
title_short |
IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
title_full |
IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
title_fullStr |
IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
title_full_unstemmed |
IntelliScan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
title_sort |
intelliscan: improving the quality of x-ray computed tomography surface data through intelligent selection of projection angles |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/172796 |
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1787136768742522880 |