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...
Main Authors: | , , , |
---|---|
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 |
id |
doaj-42170df63d0145a4ba82f4390d2b4467 |
---|---|
record_format |
Article |
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 |
work_keys_str_mv |
AT semihbarutcu limitedanglecomputedtomographywithdeepimageandphysicspriors AT selinaslan limitedanglecomputedtomographywithdeepimageandphysicspriors AT aggeloskkatsaggelos limitedanglecomputedtomographywithdeepimageandphysicspriors AT dogagursoy limitedanglecomputedtomographywithdeepimageandphysicspriors |
_version_ |
1717755576851628032 |