Structural Concept Learning via Graph Attention for Multi-Level Rearrangement Planning

Purdue University
Conference on Robot Learning (CoRL) 2023

Real robot 16 object multi-level rearrangement

Real robot 12 object multi-level rearrangement

Real robot 8 object multi-level rearrangement

Simulated 19 object multi-level rearrangement

Abstract

Robotic manipulation tasks, such as object rearrangement, play a crucial role in enabling robots to interact with complex and arbitrary environments. Existing work focuses primarily on single-level rearrangement planning and, even if multiple levels exist, dependency relations among substructures are geometrically simpler, like tower stacking. We propose Structural Concept Learning (SCL), a deep learning approach that leverages graph attention networks to perform multi-level object rearrangement planning for scenes with structural dependency hierarchies. It is trained on a self-generated simulation data set with intuitive structures, works for unseen scenes with an arbitrary number of objects and higher complexity of structures, infers independent substructures to allow for task parallelization over multiple manipulators, and generalizes to the real world. We compare our method with a range of classical and model-based baselines to show that our method leverages its scene understanding to achieve better performance, flexibility, and efficiency.

BibTeX

@article{kulshrestha2023scl,
        title={Structural Concept Learning via Graph Attention for Multi-Level Rearrangement Planning}, 
        author={Manav Kulshrestha and Ahmed H. Qureshi},
        year={2023},
        journal={Conference on Robot Learning (CoRL)}
  }