Computed tomography reconstruction using deep image prior and learned reconstruction methods

In this paper we describe an investigation into the application of deep learning methods for low-dose and sparse angle computed tomography using small training datasets. To motivate our work we review some of the existing approaches and obtain quantitative results after training them with different...

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Bibliographic Details
Published inInverse problems Vol. 36; no. 9; pp. 94004 - 94027
Main Authors Baguer, Daniel Otero, Leuschner, Johannes, Schmidt, Maximilian
Format Journal Article
LanguageEnglish
Published IOP Publishing 01.09.2020
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Summary:In this paper we describe an investigation into the application of deep learning methods for low-dose and sparse angle computed tomography using small training datasets. To motivate our work we review some of the existing approaches and obtain quantitative results after training them with different amounts of data. We find that the learned primal-dual method has an outstanding performance in terms of reconstruction quality and data efficiency. However, in general, end-to-end learned methods have two deficiencies: (a) a lack of classical guarantees in inverse problems and (b) the lack of generalization after training with insufficient data. To overcome these problems, we introduce the deep image prior approach in combination with classical regularization and an initial reconstruction. The proposed methods achieve the best results in the low-data regime in three challenging scenarios.
Bibliography:IP-102631.R1
ISSN:0266-5611
1361-6420
DOI:10.1088/1361-6420/aba415