Deep learning for improving non-destructive grain mapping in 3D

Laboratory X-ray diffraction contrast tomography (LabDCT) is a novel imaging technique for non-destructive 3D characterization of grain structures. An accurate grain reconstruction critically relies on precise segmentation of diffraction spots in the LabDCT images. The conventional method utilizing...

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Main Authors: H. Fang, E. Hovad, Y. Zhang, L. K. H. Clemmensen, B. Kjaer Ersbøll, D. Juul Jensen
Format: Article
Language:English
Published: International Union of Crystallography 2021-09-01
Series:IUCrJ
Subjects:
Online Access:http://scripts.iucr.org/cgi-bin/paper?S2052252521005480
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spelling doaj-fea49c90b12646da9ebf81fae577ed532021-09-06T13:16:24ZengInternational Union of CrystallographyIUCrJ2052-25252021-09-018571973110.1107/S2052252521005480ro5028Deep learning for improving non-destructive grain mapping in 3DH. Fang0E. Hovad1Y. Zhang2L. K. H. Clemmensen3B. Kjaer Ersbøll4D. Juul Jensen5Department of Mechanical Engineering, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkDepartment of Applied Mathematics and Computer Science, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkDepartment of Mechanical Engineering, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkDepartment of Applied Mathematics and Computer Science, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkDepartment of Applied Mathematics and Computer Science, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkDepartment of Mechanical Engineering, Technical University of Denmark, Kgs. Lyngby 2800, DenmarkLaboratory X-ray diffraction contrast tomography (LabDCT) is a novel imaging technique for non-destructive 3D characterization of grain structures. An accurate grain reconstruction critically relies on precise segmentation of diffraction spots in the LabDCT images. The conventional method utilizing various filters generally satisfies segmentation of sharp spots in the images, thereby serving as a standard routine, but it also very often leads to over or under segmentation of spots, especially those with low signal-to-noise ratios and/or small sizes. The standard routine also requires a fine tuning of the filtering parameters. To overcome these challenges, a deep learning neural network is presented to efficiently and accurately clean the background noise, thereby easing the spot segmentation. The deep learning network is first trained with input images, synthesized using a forward simulation model for LabDCT in combination with a generic approach to extract features of experimental backgrounds. Then, the network is applied to remove the background noise from experimental images measured under different geometrical conditions for different samples. Comparisons of both processed images and grain reconstructions show that the deep learning method outperforms the standard routine, demonstrating significantly better grain mapping.http://scripts.iucr.org/cgi-bin/paper?S2052252521005480grain mappingx-ray diffractiontomographydeep learningcomputer visionbackground noisespot segmentationlabdct
collection DOAJ
language English
format Article
sources DOAJ
author H. Fang
E. Hovad
Y. Zhang
L. K. H. Clemmensen
B. Kjaer Ersbøll
D. Juul Jensen
spellingShingle H. Fang
E. Hovad
Y. Zhang
L. K. H. Clemmensen
B. Kjaer Ersbøll
D. Juul Jensen
Deep learning for improving non-destructive grain mapping in 3D
IUCrJ
grain mapping
x-ray diffraction
tomography
deep learning
computer vision
background noise
spot segmentation
labdct
author_facet H. Fang
E. Hovad
Y. Zhang
L. K. H. Clemmensen
B. Kjaer Ersbøll
D. Juul Jensen
author_sort H. Fang
title Deep learning for improving non-destructive grain mapping in 3D
title_short Deep learning for improving non-destructive grain mapping in 3D
title_full Deep learning for improving non-destructive grain mapping in 3D
title_fullStr Deep learning for improving non-destructive grain mapping in 3D
title_full_unstemmed Deep learning for improving non-destructive grain mapping in 3D
title_sort deep learning for improving non-destructive grain mapping in 3d
publisher International Union of Crystallography
series IUCrJ
issn 2052-2525
publishDate 2021-09-01
description Laboratory X-ray diffraction contrast tomography (LabDCT) is a novel imaging technique for non-destructive 3D characterization of grain structures. An accurate grain reconstruction critically relies on precise segmentation of diffraction spots in the LabDCT images. The conventional method utilizing various filters generally satisfies segmentation of sharp spots in the images, thereby serving as a standard routine, but it also very often leads to over or under segmentation of spots, especially those with low signal-to-noise ratios and/or small sizes. The standard routine also requires a fine tuning of the filtering parameters. To overcome these challenges, a deep learning neural network is presented to efficiently and accurately clean the background noise, thereby easing the spot segmentation. The deep learning network is first trained with input images, synthesized using a forward simulation model for LabDCT in combination with a generic approach to extract features of experimental backgrounds. Then, the network is applied to remove the background noise from experimental images measured under different geometrical conditions for different samples. Comparisons of both processed images and grain reconstructions show that the deep learning method outperforms the standard routine, demonstrating significantly better grain mapping.
topic grain mapping
x-ray diffraction
tomography
deep learning
computer vision
background noise
spot segmentation
labdct
url http://scripts.iucr.org/cgi-bin/paper?S2052252521005480
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AT ehovad deeplearningforimprovingnondestructivegrainmappingin3d
AT yzhang deeplearningforimprovingnondestructivegrainmappingin3d
AT lkhclemmensen deeplearningforimprovingnondestructivegrainmappingin3d
AT bkjaerersbøll deeplearningforimprovingnondestructivegrainmappingin3d
AT djuuljensen deeplearningforimprovingnondestructivegrainmappingin3d
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