Benchmarking learned algorithms for computed tomography image reconstruction tasks
Computed tomography (CT) is a widely used non-invasive diagnostic method in various fields, and recent advances in deep learning have led to significant progress in CT image reconstruction. However, the lack of large-scale, open-access datasets has hindered the comparison of different types of learn...
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Zusammenfassung: | Computed tomography (CT) is a widely used non-invasive diagnostic method in
various fields, and recent advances in deep learning have led to significant
progress in CT image reconstruction. However, the lack of large-scale,
open-access datasets has hindered the comparison of different types of learned
methods. To address this gap, we use the 2DeteCT dataset, a real-world
experimental computed tomography dataset, for benchmarking machine learning
based CT image reconstruction algorithms. We categorize these methods into
post-processing networks, learned/unrolled iterative methods, learned
regularizer methods, and plug-and-play methods, and provide a pipeline for easy
implementation and evaluation. Using key performance metrics, including SSIM
and PSNR, our benchmarking results showcase the effectiveness of various
algorithms on tasks such as full data reconstruction, limited-angle
reconstruction, sparse-angle reconstruction, low-dose reconstruction, and
beam-hardening corrected reconstruction. With this benchmarking study, we
provide an evaluation of a range of algorithms representative for different
categories of learned reconstruction methods on a recently published dataset of
real-world experimental CT measurements. The reproducible setup of methods and
CT image reconstruction tasks in an open-source toolbox enables straightforward
addition and comparison of new methods later on. The toolbox also provides the
option to load the 2DeteCT dataset differently for extensions to other problems
and different CT reconstruction tasks. |
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DOI: | 10.48550/arxiv.2412.08350 |