Pb4U-GNet: Resolution-Adaptive Garment Simulation via Propagation-before-Update Graph Network

Authors

  • Aoran Liu The University of Sydney
  • Kun Hu Edith Cowan University
  • Clinton Ansun Mo The University of Tokyo
  • Qiuxia Wu South China University of Technology
  • Wenxiong Kang South China University of Technology
  • Zhiyong Wang The University of Sydney

DOI:

https://doi.org/10.1609/aaai.v40i9.37641

Abstract

Garment simulation is fundamental to various applications in computer vision and graphics, from virtual try-on to digital human modelling. However, conventional physics-based methods remain computationally expensive, hindering their application in time-sensitive scenarios. While graph neural networks (GNNs) offer promising acceleration, existing approaches exhibit poor cross-resolution generalisation, demonstrating significant performance degradation on higher-resolution meshes beyond the training distribution. This stems from two key factors: (1) existing GNNs employ fixed message-passing depth that fails to adapt information aggregation to mesh density variation, and (2) vertex-wise displacement magnitudes are inherently resolution-dependent in garment simulation. To address these issues, we introduce Propagation-before-Update Graph Network (Pb4U-GNet), a resolution-adaptive framework that decouples message propagation from feature updates. Pb4U-GNet incorporates two key mechanisms: (1) dynamic propagation depth control, adjusting message-passing iterations based on mesh resolution, and (2) geometry-aware update scaling, which scales predictions according to local mesh characteristics. Extensive experiments show that even trained solely on low-resolution meshes, Pb4U-GNet exhibits strong generalisability across diverse mesh resolutions, addressing a fundamental challenge in neural garment simulation.

Published

2026-03-14

How to Cite

Liu, A., Hu, K., Mo, C. A., Wu, Q., Kang, W., & Wang, Z. (2026). Pb4U-GNet: Resolution-Adaptive Garment Simulation via Propagation-before-Update Graph Network. Proceedings of the AAAI Conference on Artificial Intelligence, 40(9), 7060–7068. https://doi.org/10.1609/aaai.v40i9.37641

Issue

Section

AAAI Technical Track on Computer Vision VI