Learning Metric Fields for Fast Low-Distortion Mesh Parameterizations

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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
The Eurographics Association and John Wiley & Sons Ltd.
Abstract
We present a fast and robust method for computing an injective parameterization with low isometric distortion for disk-like triangular meshes. Harmonic function-based methods, with their rich mathematical foundation, are widely used. Harmonic maps are particularly valuable for ensuring injectivity under certain boundary conditions. In addition, they offer computational efficiency by forming a linear subspace [FW22]. However, this restricted subspace often leads to significant isometric distortion, especially for highly curved surfaces. Conversely, methods that operate in the full space of piecewise linear maps [SPSH∗17] achieve lower isometric distortion, but at a higher computational cost. Aigerman et al. [AGK∗22] pioneered a parameterization method that uses deep neural networks to predict the Jacobians of the map at mesh triangles, and integrates them into an explicit map by solving a Poisson equation. However, this approach often results in significant Poisson reconstruction errors due to the inability to ensure the integrability of the predicted neural Jacobian field, leading to unbounded distortion and lack of local injectivity. We propose a hybrid method that combines the speed and robustness of harmonic maps with the generality of deep neural networks to produce injective maps with low isometric distortion much faster than state-of-the-art methods. The core concept is simple but powerful. Instead of learning Jacobian fields, we learn metric tensor fields over the input mesh, resulting in a customized Laplacian matrix that defines a harmonic map in a modified metric [WGS23]. Our approach ensures injectivity, offers great computational efficiency, and produces significantly lower isometric distortion compared to straightforward harmonic maps.
Description

CCS Concepts: Computing methodologies → Machine learning algorithms; Mesh geometry models

        
@article{
10.1111:cgf.70061
, journal = {Computer Graphics Forum}, title = {{
Learning Metric Fields for Fast Low-Distortion Mesh Parameterizations
}}, author = {
Fargion, Guy
and
Weber, Ofir
}, year = {
2025
}, publisher = {
The Eurographics Association and John Wiley & Sons Ltd.
}, ISSN = {
1467-8659
}, DOI = {
10.1111/cgf.70061
} }
Citation