Dynamic Inference on Graphs using Structured Transition Models
Saumya Saxena, Oliver Kroemer

TL;DR
This paper introduces a method for learning dynamic, evolving contact graphs and stable local linear models for interactive systems, enabling efficient control and planning in complex robotic tasks with generalization to unseen interactions.
Contribution
It proposes a novel approach combining dynamic graph learning with stable local linear models, facilitating scalable and accurate control of interacting systems.
Findings
Effective in simulation and real-world experiments
Generalizes to new objects and interactions
Enables long-horizon planning with optimal control
Abstract
Enabling robots to perform complex dynamic tasks such as picking up an object in one sweeping motion or pushing off a wall to quickly turn a corner is a challenging problem. The dynamic interactions implicit in these tasks are critical towards the successful execution of such tasks. Graph neural networks (GNNs) provide a principled way of learning the dynamics of interactive systems but can suffer from scaling issues as the number of interactions increases. Furthermore, the problem of using learned GNN-based models for optimal control is insufficiently explored. In this work, we present a method for efficiently learning the dynamics of interacting systems by simultaneously learning a dynamic graph structure and a stable and locally linear forward model of the system. The dynamic graph structure encodes evolving contact modes along a trajectory by making probabilistic predictions over…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Reinforcement Learning in Robotics
