ArXiv TLDR

Learning Equivariant Neural-Augmented Object Dynamics From Few Interactions

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2605.02699

Sergio Orozco, Tushar Kusnur, Brandon May, George Konidaris, Laura Herlant

cs.ROcs.AIcs.CVcs.LG

TLDR

PIEGraph combines physics-informed models with equivariant GNNs to learn robust object dynamics from few interactions for robotic manipulation.

Key contributions

  • Combines analytical physics (spring-mass) with an equivariant GNN for object dynamics.
  • Employs a physically informed particle model to ensure motion feasibility.
  • Uses an equivariant GNN with a novel action representation exploiting symmetries.
  • Enables accurate dynamics prediction and reliable robotic manipulation planning.

Why it matters

This paper introduces a novel hybrid approach to learn robust object dynamics for robotic manipulation. By integrating analytical physics with GNNs, it overcomes limitations of data-driven models, ensuring physical feasibility and requiring less interaction data. This leads to more reliable and practical robotic control for complex objects.

Original Abstract

Learning data-efficient object dynamics models for robotic manipulation remains challenging, especially for deformable objects. A popular approach is to model objects as sets of 3D particles and learn their motion using graph neural networks. In practice, this is not enough to maintain physical feasibility over long horizons and may require large amounts of interaction data to learn. We introduce PIEGraph, a novel approach to combining analytical physics and data-driven models to capture object dynamics for both rigid and deformable bodies using limited real-world interaction data. PIEGraph consists of two components: (1) a \textbf{P}hysically \textbf{I}nformed particle-based analytical model (implemented as a spring--mass system) to enforce physically feasible motion, and (2) an \textbf{E}quivariant \textbf{Graph} Neural Network with a novel action representation that exploits symmetries in particle interactions to guide the analytical model. We evaluate PIEGraph in simulation and on robot hardware for reorientation and repositioning tasks with ropes, cloth, stuffed animals and rigid objects. We show that our method enables accurate dynamics prediction and reliable downstream robotic manipulation planning, which outperforms state of the art baselines.

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