Abstract
In this paper, we investigate image reconstruction for dynamic computed tomography. The motion of the target with respect to the measurement acquisition rate leads to highly resolved in time but highly undersampled in space measurements. Such problems pose a major challenge: not accounting for the dynamics of the process leads to a poor reconstruction with non-realistic motion. Variational approaches that penalize time evolution have been proposed to relate subsequent frames and improve image quality based on classical grid-based discretizations. Neural fields have emerged as a novel way to parameterize the quantity of interest using a neural network with a low-dimensional input, benefiting from being lightweight, continuous, and biased towards smooth representations. The latter property has been exploited when solving dynamic inverse problems with neural fields by minimizing a data-fidelity term only. We investigate and show the benefits of introducing explicit motion regularizers for dynamic inverse problems based on partial differential equations, namely the optical flow equation, for the optimization of neural fields. We compare it against its unregularized counterpart and show the improvements in the reconstruction. We also compare neural fields against a grid-based solver and show that the former outperforms the latter in terms of PSNR in this task.
| Original language | English |
|---|---|
| Article number | 42 |
| Journal | Journal of Mathematical Imaging and Vision |
| Volume | 67 |
| Issue number | 4 |
| Early online date | 10 Jul 2025 |
| DOIs | |
| Publication status | Published - Aug 2025 |
Bibliographical note
Publisher Copyright:© The Author(s) 2025.
Data Availability Statement
Code and data are available from the corresponding author on reasonable request. These will be made available on GitHub upon publicationAcknowledgements
The authors gratefully acknowledge the University of Bath’s Research Computing Group (doi.org/10.15125/b6cd-s854) for their support in this work.Funding
PA is supported by a scholarship from the EPSRC Centre for Doctoral Training in Statistical Applied Mathematics at Bath (SAMBa), under the project EP/S022945/1. MJE acknowledges support from the EPSRC (EP/S026045/1, EP/T026693/1, EP/V026259/1, EP/Y037286/1) and the European Union Horizon 2020 research and innovation programme under the Marie Skodowska-Curie grant agreement REMODEL. The authors gratefully acknowledge the University of Bath\u2019s Research Computing Group (doi.org/10.15125/b6cd-s854) for their support in this work.
| Funders | Funder number |
|---|---|
| EU - Horizon 2020 | |
| H2020 Marie Skłodowska-Curie Actions | |
| Engineering and Physical Sciences Research Council | EP/V026259/1, EP/Y037286/1, EP/S026045/1, EP/T026693/1 |
| Centre for Doctoral Training in Statistical Applied Mathematics, University of Bath | EP/S022945/1 |
Keywords
- eess.IV
- cs.CV
- Dynamic computed tomography
- Neural fields
- Optical flow
- Physics-informed neural networks
ASJC Scopus subject areas
- Statistics and Probability
- Modelling and Simulation
- Condensed Matter Physics
- Computer Vision and Pattern Recognition
- Geometry and Topology
- Applied Mathematics

