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Bibliographic Details
Main Authors: Terpstra, M. L., Berg, C. A. T. van den
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.21980
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author Terpstra, M. L.
Berg, C. A. T. van den
author_facet Terpstra, M. L.
Berg, C. A. T. van den
contents Motivation: Quickly obtaining high-quality MRI from accelerated acquisitions is important to mitigate motion artifacts, maintain patient comfort, and improve clinical efficiency. Goals: To obtain high-quality dynamic MRI using efficient, personalized models. Approach: We propose a novel explicit representation learning approach using Gaussian splatting. Multiple Gaussian primitives are trained to represent the underlying tissue. We extend the Gaussian splatting framework to model anatomical motion, enabling learning an efficient, explicit representation of dynamic MRI. Results: Gaussian splats can be trained in 60s with 0.5ms/dynamic inference time. High-quality cardiac MRI is obtained at R=16. We show that the properties of the Gaussians directly encode physiological properties.
format Preprint
id arxiv_https___arxiv_org_abs_2603_21980
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Fast undersampled dynamic MRI reconstruction using explicit representation learning with Gaussian splatting
Terpstra, M. L.
Berg, C. A. T. van den
Medical Physics
Motivation: Quickly obtaining high-quality MRI from accelerated acquisitions is important to mitigate motion artifacts, maintain patient comfort, and improve clinical efficiency. Goals: To obtain high-quality dynamic MRI using efficient, personalized models. Approach: We propose a novel explicit representation learning approach using Gaussian splatting. Multiple Gaussian primitives are trained to represent the underlying tissue. We extend the Gaussian splatting framework to model anatomical motion, enabling learning an efficient, explicit representation of dynamic MRI. Results: Gaussian splats can be trained in 60s with 0.5ms/dynamic inference time. High-quality cardiac MRI is obtained at R=16. We show that the properties of the Gaussians directly encode physiological properties.
title Fast undersampled dynamic MRI reconstruction using explicit representation learning with Gaussian splatting
topic Medical Physics
url https://arxiv.org/abs/2603.21980