A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction
Deep Learning is developing interesting tools that are of great interest for inverse imaging applications. In this work, we consider a medical imaging reconstruction task from subsampled measurements, which is an active research field where Convolutional Neural Networks have already revealed their g...
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doaj-22d4837d517b40909c08147bbe0a6e622021-08-26T13:56:31ZengMDPI AGJournal of Imaging2313-433X2021-08-01713913910.3390/jimaging7080139A Green Prospective for Learned Post-Processing in Sparse-View Tomographic ReconstructionElena Morotti0Davide Evangelista1Elena Loli Piccolomini2Department of Political and Social Sciences, University of Bologna, 40126 Bologna, ItalyDepartment of Mathematics, University of Bologna, 40126 Bologna, ItalyDepartment of Computer Science and Engineering, University of Bologna, 40126 Bologna, ItalyDeep Learning is developing interesting tools that are of great interest for inverse imaging applications. In this work, we consider a medical imaging reconstruction task from subsampled measurements, which is an active research field where Convolutional Neural Networks have already revealed their great potential. However, the commonly used architectures are very deep and, hence, prone to overfitting and unfeasible for clinical usages. Inspired by the ideas of the green AI literature, we propose a shallow neural network to perform efficient Learned Post-Processing on images roughly reconstructed by the filtered backprojection algorithm. The results show that the proposed inexpensive network computes images of comparable (or even higher) quality in about one-fourth of time and is more robust than the widely used and very deep ResUNet for tomographic reconstructions from sparse-view protocols.https://www.mdpi.com/2313-433X/7/8/139green AIsparse-views tomographylearned post-processingCNNUNettomographic reconstruction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Elena Morotti Davide Evangelista Elena Loli Piccolomini |
spellingShingle |
Elena Morotti Davide Evangelista Elena Loli Piccolomini A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction Journal of Imaging green AI sparse-views tomography learned post-processing CNN UNet tomographic reconstruction |
author_facet |
Elena Morotti Davide Evangelista Elena Loli Piccolomini |
author_sort |
Elena Morotti |
title |
A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction |
title_short |
A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction |
title_full |
A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction |
title_fullStr |
A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction |
title_full_unstemmed |
A Green Prospective for Learned Post-Processing in Sparse-View Tomographic Reconstruction |
title_sort |
green prospective for learned post-processing in sparse-view tomographic reconstruction |
publisher |
MDPI AG |
series |
Journal of Imaging |
issn |
2313-433X |
publishDate |
2021-08-01 |
description |
Deep Learning is developing interesting tools that are of great interest for inverse imaging applications. In this work, we consider a medical imaging reconstruction task from subsampled measurements, which is an active research field where Convolutional Neural Networks have already revealed their great potential. However, the commonly used architectures are very deep and, hence, prone to overfitting and unfeasible for clinical usages. Inspired by the ideas of the green AI literature, we propose a shallow neural network to perform efficient Learned Post-Processing on images roughly reconstructed by the filtered backprojection algorithm. The results show that the proposed inexpensive network computes images of comparable (or even higher) quality in about one-fourth of time and is more robust than the widely used and very deep ResUNet for tomographic reconstructions from sparse-view protocols. |
topic |
green AI sparse-views tomography learned post-processing CNN UNet tomographic reconstruction |
url |
https://www.mdpi.com/2313-433X/7/8/139 |
work_keys_str_mv |
AT elenamorotti agreenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction AT davideevangelista agreenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction AT elenalolipiccolomini agreenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction AT elenamorotti greenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction AT davideevangelista greenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction AT elenalolipiccolomini greenprospectiveforlearnedpostprocessinginsparseviewtomographicreconstruction |
_version_ |
1721192232602566656 |