English

Transformer with Implicit Edges for Particle-based Physics Simulation

Machine Learning 2022-07-25 v1 Graphics

Abstract

Particle-based systems provide a flexible and unified way to simulate physics systems with complex dynamics. Most existing data-driven simulators for particle-based systems adopt graph neural networks (GNNs) as their network backbones, as particles and their interactions can be naturally represented by graph nodes and graph edges. However, while particle-based systems usually contain hundreds even thousands of particles, the explicit modeling of particle interactions as graph edges inevitably leads to a significant computational overhead, due to the increased number of particle interactions. Consequently, in this paper we propose a novel Transformer-based method, dubbed as Transformer with Implicit Edges (TIE), to capture the rich semantics of particle interactions in an edge-free manner. The core idea of TIE is to decentralize the computation involving pair-wise particle interactions into per-particle updates. This is achieved by adjusting the self-attention module to resemble the update formula of graph edges in GNN. To improve the generalization ability of TIE, we further amend TIE with learnable material-specific abstract particles to disentangle global material-wise semantics from local particle-wise semantics. We evaluate our model on diverse domains of varying complexity and materials. Compared with existing GNN-based methods, without bells and whistles, TIE achieves superior performance and generalization across all these domains. Codes and models are available at https://github.com/ftbabi/TIE_ECCV2022.git.

Keywords

Cite

@article{arxiv.2207.10860,
  title  = {Transformer with Implicit Edges for Particle-based Physics Simulation},
  author = {Yidi Shao and Chen Change Loy and Bo Dai},
  journal= {arXiv preprint arXiv:2207.10860},
  year   = {2022}
}

Comments

Accepted by ECCV2022, 14 pages

R2 v1 2026-06-25T01:08:11.951Z