RISING a new framework for few-view tomographic image reconstruction with deep learning
Davide Evangelista, Elena Morotti, Elena Loli Piccolomini

TL;DR
RISING is a hybrid framework combining a few iterations of a regularized iterative solver with a neural network to efficiently reconstruct high-quality tomographic images from sparse data, balancing accuracy and computational speed.
Contribution
It introduces a novel two-step hybrid approach that preserves convergence while leveraging deep learning for faster image reconstruction.
Findings
Achieves accurate reconstructions with fewer iterations.
Demonstrates improved speed over traditional iterative methods.
Validates effectiveness on simulated and real datasets.
Abstract
This paper proposes a new two-step procedure for sparse-view tomographic image reconstruction. It is called RISING, since it combines an early-stopped Rapid Iterative Solver with a subsequent Iteration Network-based Gaining step. So far, regularized iterative methods have widely been used for X-ray computed tomography image reconstruction from low-sampled data, since they converge to a sparse solution in a suitable domain, as upheld by the Compressed Sensing theory. Unfortunately, their use is practically limited by their high computational cost which imposes to perform only a few iterations in the available time for clinical exams. Data-driven methods, using neural networks to post-process a coarse and noisy image obtained from geometrical algorithms, have been recently studied and appreciated for both their computational speed and accurate reconstructions. However, there is no…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Advanced X-ray and CT Imaging · Advanced MRI Techniques and Applications
