Limited-angle computed tomography with deep image and physics priors

Abstract Computed tomography is a well-established x-ray imaging technique to reconstruct the three-dimensional structure of objects. It has been used extensively in a variety of fields, from diagnostic imaging to materials and biological sciences. One major challenge in some applications, such as i...

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Main Authors: Semih Barutcu, Selin Aslan, Aggelos K. Katsaggelos, Doğa Gürsoy
Format: Article
Language:English
Published: Nature Publishing Group 2021-09-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-97226-2
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spelling doaj-42170df63d0145a4ba82f4390d2b44672021-09-12T11:25:45ZengNature Publishing GroupScientific Reports2045-23222021-09-0111111210.1038/s41598-021-97226-2Limited-angle computed tomography with deep image and physics priorsSemih Barutcu0Selin Aslan1Aggelos K. Katsaggelos2Doğa Gürsoy3Northwestern UniversityArgonne National LaboratoryNorthwestern UniversityNorthwestern UniversityAbstract Computed tomography is a well-established x-ray imaging technique to reconstruct the three-dimensional structure of objects. It has been used extensively in a variety of fields, from diagnostic imaging to materials and biological sciences. One major challenge in some applications, such as in electron or x-ray tomography systems, is that the projections cannot be gathered over all the angles due to the sample holder setup or shape of the sample. This results in an ill-posed problem called the limited angle reconstruction problem. Typical image reconstruction in this setup leads to distortion and artifacts, thereby hindering a quantitative evaluation of the results. To address this challenge, we use a generative model to effectively constrain the solution of a physics-based approach. Our approach is self-training that can iteratively learn the nonlinear mapping from partial projections to the scanned object. Because our approach combines the data likelihood and image prior terms into a single deep network, it is computationally tractable and improves performance through an end-to-end training. We also complement our approach with total-variation regularization to handle high-frequency noise in reconstructions and implement a solver based on alternating direction method of multipliers. We present numerical results for various degrees of missing angle range and noise levels, which demonstrate the effectiveness of the proposed approach.https://doi.org/10.1038/s41598-021-97226-2
collection DOAJ
language English
format Article
sources DOAJ
author Semih Barutcu
Selin Aslan
Aggelos K. Katsaggelos
Doğa Gürsoy
spellingShingle Semih Barutcu
Selin Aslan
Aggelos K. Katsaggelos
Doğa Gürsoy
Limited-angle computed tomography with deep image and physics priors
Scientific Reports
author_facet Semih Barutcu
Selin Aslan
Aggelos K. Katsaggelos
Doğa Gürsoy
author_sort Semih Barutcu
title Limited-angle computed tomography with deep image and physics priors
title_short Limited-angle computed tomography with deep image and physics priors
title_full Limited-angle computed tomography with deep image and physics priors
title_fullStr Limited-angle computed tomography with deep image and physics priors
title_full_unstemmed Limited-angle computed tomography with deep image and physics priors
title_sort limited-angle computed tomography with deep image and physics priors
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-09-01
description Abstract Computed tomography is a well-established x-ray imaging technique to reconstruct the three-dimensional structure of objects. It has been used extensively in a variety of fields, from diagnostic imaging to materials and biological sciences. One major challenge in some applications, such as in electron or x-ray tomography systems, is that the projections cannot be gathered over all the angles due to the sample holder setup or shape of the sample. This results in an ill-posed problem called the limited angle reconstruction problem. Typical image reconstruction in this setup leads to distortion and artifacts, thereby hindering a quantitative evaluation of the results. To address this challenge, we use a generative model to effectively constrain the solution of a physics-based approach. Our approach is self-training that can iteratively learn the nonlinear mapping from partial projections to the scanned object. Because our approach combines the data likelihood and image prior terms into a single deep network, it is computationally tractable and improves performance through an end-to-end training. We also complement our approach with total-variation regularization to handle high-frequency noise in reconstructions and implement a solver based on alternating direction method of multipliers. We present numerical results for various degrees of missing angle range and noise levels, which demonstrate the effectiveness of the proposed approach.
url https://doi.org/10.1038/s41598-021-97226-2
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AT selinaslan limitedanglecomputedtomographywithdeepimageandphysicspriors
AT aggeloskkatsaggelos limitedanglecomputedtomographywithdeepimageandphysicspriors
AT dogagursoy limitedanglecomputedtomographywithdeepimageandphysicspriors
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