Published September 14, 2025
| Published
Book Section - Chapter
Non-Rigid Motion Correction for MRI Reconstruction via Coarse-to-Fine Diffusion Models
Abstract
Magnetic Resonance Imaging (MRI) is highly susceptible to motion artifacts due to the extended acquisition times required for k-space sampling. These artifacts can compromise diagnostic utility, particularly for dynamic imaging. We propose a novel alternating minimization framework that leverages a bespoke diffusion model to jointly reconstruct and correct non-rigid motion-corrupted k-space data. The diffusion model uses a coarse-to-fine denoising strategy to capture large overall motion and reconstruct the lower frequencies of the image first, providing a better inductive bias for motion estimation than that of standard diffusion models. We demonstrate the performance of our approach on both real-world cine cardiac MRI datasets and complex simulated rigid and non-rigid deformations, even when each motion state is undersampled by a factor of 64×. Additionally, our method is agnostic to sampling patterns, anatomical variations, and MRI scanning protocols, as long as some low frequency components are sampled during each motion state.
Copyright and License
©2025 IEEE.
Acknowledgement
The authors thank Miki Lustig for fruitful discussions, and research support from NSF IFML 2019844, CCF-2239687, Google Research Scholars, and Chan Zuckerberg Initiative
Additional details
- National Science Foundation
- CCF-2019844
- National Science Foundation
- CCF-2239687
- Google (United States)
- Google Research Scholars -
- Chan Zuckerberg Initiative (United States)
- Caltech groups
- Division of Engineering and Applied Science (EAS)
- Publication Status
- Published