Learning Deformable Body Interactions With Adaptive Spatial Tokenization
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AuthorsHao Wang*, Yu Liu*, Daniel Biggs, Haoru Wang, Jiandong Yu, Ping Huang

This paper was accepted at the AI for Science Workshop at NeurIPS 2025.

Simulating interactions between deformable bodies is vital in fields like material science, mechanical design, and robotics. While learning-based methods with Graph Neural Networks (GNNs) are effective at solving complex physical systems, they encounter scalability issues when modeling deformable body interactions. To model interactions between objects, pairwise global edges have to be created dynamically, which is computationally intensive and impractical for large-scale meshes. To overcome these challenges, drawing on insights from geometric representations, we propose an Adaptive Spatial Tokenization (AST) method for efficient r…

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