HalfedgeCNN for Native and Flexible Deep Learning on Triangle Meshes

Autor(en): Ludwig, I.
Tyson, D.
Campen, M. 
Stichwörter: & RARR; CCS Concepts; Computer Science; Computer Science, Software Engineering; Computing methodologies; Mesh models; Neural networks; Shape analysis
Erscheinungsdatum: 2023
Herausgeber: WILEY
Journal: COMPUTER GRAPHICS FORUM
Volumen: 42
Ausgabe: 5
Zusammenfassung: 
We describe HalfedgeCNN, a collection of modules to build neural networks that operate on triangle meshes. Taking inspiration from the (edge-based) MeshCNN, convolution, pooling, and unpooling layers are consistently defined on the basis of halfedges of the mesh, pairs of oppositely oriented virtual instances of each edge. This provides benefits over alternative definitions on the basis of vertices, edges, or faces. Additional interface layers enable support for feature data associated with such mesh entities in input and output as well. Due to being defined natively on mesh entities and their neighborhoods, lossy resampling or interpolation techniques (to enable the application of operators adopted from image domains) do not need to be employed. The operators have various degrees of freedom that can be exploited to adapt to application-specific needs.
ISSN: 0167-7055
DOI: 10.1111/cgf.14898

Zur Langanzeige

Seitenaufrufe

1
Letzte Woche
0
Letzter Monat
0
geprüft am 14.05.2024

Google ScholarTM

Prüfen

Altmetric