Diffusion-Shock PDEs for Deep Learning on Position-Orientation Space
Abstract
We extend Regularised Diffusion-Shock (RDS) filtering from Euclidean space [1] to position-orientation space . This has numerous advantages, e.g. making it possible to enhance and inpaint crossing structures, since they become disentangled when lifted to . We create a version of the algorithm using gauge frames to mitigate issues caused by lifting to a finite number of orientations. This leads us to study generalisations of diffusion, since the gauge frame diffusion is not generated by the Laplace-Beltrami operator. RDS filtering compares favourably to existing techniques such as Total Roto-Translational Variation (TR-TV) flow, NLM, and BM3D when denoising images with crossing structures, particularly if they are segmented. Furthermore, we see that RDS inpainting is indeed able to restore crossing structures, unlike RDS inpainting. In addition to the contributions of our SSVM submission "Diffusion-Shock Filtering on the Space of Positions and Orientations", in this extended work we provide new theorical results and automate RDS filtering by integrating it into a geometric deep learning framework. Regarding our theoretical contributions, we prove that our generalised diffusions are still well-posed, smoothing, and analytic. We developed an RDS filtering PDE layer for the PDE-CNN and PDE-G-CNN deep learning frameworks, using a novel gating mechanism. We show that these new RDS PDE layers can be beneficial in various impainting and denoising tasks.
Cite
@article{arxiv.2509.06405,
title = {Diffusion-Shock PDEs for Deep Learning on Position-Orientation Space},
author = {Finn M. Sherry and Kristina Schaefer and Remco Duits},
journal= {arXiv preprint arXiv:2509.06405},
year = {2026}
}
Comments
Accepted in the Journal of Mathematical Imaging and Vision Special Issue on Scale Space and Variational Methods in Computer Vision 2025 (SSVM). arXiv admin note: text overlap with arXiv:2502.17146