NANAOct 26, 2017

Solving variational problems and partial differential equations that map between manifolds via the closest point method

arXiv:1710.096555 citationsh-index: 35
Originality Incremental advance
AI Analysis

This work provides a practical numerical method for solving PDEs between manifolds, benefiting applications in liquid crystals, image processing, and brain mapping, though it is an incremental improvement over existing embedding methods.

The paper introduces a numerical framework, the closest point method for manifold mapping, to solve variational problems and PDEs that map between manifolds. The method reduces constrained PDEs to simpler PDEs on the source manifold with projection, achieving improved efficiency and robustness over level set methods in convergence studies.

Maps from a source manifold $ {\mathcal M}$ to a target manifold ${\mathcal N}$ appear in liquid crystals, colour image enhancement, texture mapping, brain mapping, and many other areas. A numerical framework to solve variational problems and partial differential equations (PDEs) that map between manifolds is introduced within this paper. Our approach, the closest point method for manifold mapping, reduces the problem of solving a constrained PDE between manifolds ${\mathcal M}$ and ${\mathcal N}$ to the simpler problems of solving a PDE on ${\mathcal M}$ and projecting to the closest points on ${\mathcal N}.$ In our approach, an embedding PDE is formulated in the embedding space using closest point representations of ${\mathcal M}$ and ${\mathcal N}.$ This enables the use of standard Cartesian numerics for general manifolds that are open or closed, with or without orientation, and of any codimension. An algorithm is presented for the important example of harmonic maps and generalized to a broader class of PDEs, which includes $p$-harmonic maps. Improved efficiency and robustness are observed in convergence studies relative to the level set embedding methods. Harmonic and $p$-harmonic maps are computed for a variety of numerical examples. In these examples, we denoise texture maps, diffuse random maps between general manifolds, and enhance colour images.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes