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Main Authors: Langer, Andreas, Runft, Marc, Rahman, Talal, Tai, Xue-Cheng, Wu, Bin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.17494
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author Langer, Andreas
Runft, Marc
Rahman, Talal
Tai, Xue-Cheng
Wu, Bin
author_facet Langer, Andreas
Runft, Marc
Rahman, Talal
Tai, Xue-Cheng
Wu, Bin
contents The TV-Stokes model is a two-step variational method for image denoising that combines the estimation of a divergence-free tangent field with total variation regularization in the first step and then uses that to reconstruct the image in the second step. Although effective in practice, its mathematical structure and potential for parallelization have remained unexplored. In this work, we establish a rigorous functional-analytic foundation for the TV-Stokes model. We formulate both steps in appropriate infinite-dimensional function spaces, derive their dual formulations, and analyze the compatibility and mathematical consistency of the coupled system. In particular, we identify analytical inconsistencies in the original formulation and demonstrate how an alternative model resolves them. We also examine the orthogonal projection onto the divergence-free subspace, proving its existence in a continuous setting and establishing consistency with its discrete counterpart. Building on this theoretical framework, we develop the first domain decomposition method for TV-Stokes by applying overlapping Schwarz-type iterations to the duals of both steps. Although the divergence-free constraint gives rise to a global projection operator in the continuous model, we show that it becomes locally computable in the discrete setting. This insight enables a fully parallelizable algorithm suitable for large-scale image processing in memory-constrained environments. Numerical experiments demonstrate the correctness of the domain decomposition approach and its usability in parallel image reconstruction.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17494
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Functional Analysis and Parallel Domain Decomposition for the TV-Stokes Model
Langer, Andreas
Runft, Marc
Rahman, Talal
Tai, Xue-Cheng
Wu, Bin
Numerical Analysis
The TV-Stokes model is a two-step variational method for image denoising that combines the estimation of a divergence-free tangent field with total variation regularization in the first step and then uses that to reconstruct the image in the second step. Although effective in practice, its mathematical structure and potential for parallelization have remained unexplored. In this work, we establish a rigorous functional-analytic foundation for the TV-Stokes model. We formulate both steps in appropriate infinite-dimensional function spaces, derive their dual formulations, and analyze the compatibility and mathematical consistency of the coupled system. In particular, we identify analytical inconsistencies in the original formulation and demonstrate how an alternative model resolves them. We also examine the orthogonal projection onto the divergence-free subspace, proving its existence in a continuous setting and establishing consistency with its discrete counterpart. Building on this theoretical framework, we develop the first domain decomposition method for TV-Stokes by applying overlapping Schwarz-type iterations to the duals of both steps. Although the divergence-free constraint gives rise to a global projection operator in the continuous model, we show that it becomes locally computable in the discrete setting. This insight enables a fully parallelizable algorithm suitable for large-scale image processing in memory-constrained environments. Numerical experiments demonstrate the correctness of the domain decomposition approach and its usability in parallel image reconstruction.
title Functional Analysis and Parallel Domain Decomposition for the TV-Stokes Model
topic Numerical Analysis
url https://arxiv.org/abs/2602.17494