Task Planning for Object Rearrangement in Multi-Room Environments

Authors

  • Karan Mirakhor TCS Research, Kolkata, India
  • Sourav Ghosh TCS Research, Kolkata, India
  • Dipanjan Das TCS Research, Kolkata, India
  • Brojeshwar Bhowmick TCS Research, Kolkata, India

DOI:

https://doi.org/10.1609/aaai.v38i9.28902

Keywords:

ROB: Other Foundations and Applications, PRS: Planning under Uncertainty, PRS: Planning with Markov Models (MDPs, POMDPs), PRS: Applications

Abstract

Object rearrangement in a multi-room setup should produce a reasonable plan that reduces the agent's overall travel and the number of steps. Recent state-of-the-art methods fail to produce such plans because they rely on explicit exploration for discovering unseen objects due to partial observability and a heuristic planner to sequence the actions for rearrangement. This paper proposes a novel task planner to efficiently plan a sequence of actions to discover unseen objects and rearrange misplaced objects within an untidy house to achieve a desired tidy state. The proposed method introduces several innovative techniques, including (i) a method for discovering unseen objects using commonsense knowledge from large language models, (ii) a collision resolution and buffer prediction method based on Cross-Entropy Method to handle blocked goal and swap cases, (iii) a directed spatial graph-based state space for scalability, and (iv) deep reinforcement learning (RL) for producing an efficient plan to simultaneously discover unseen objects and rearrange the visible misplaced ones to minimize the overall traversal. The paper also presents new metrics and a benchmark dataset called MoPOR to evaluate the effectiveness of the rearrangement planning in a multi-room setting. The experimental results demonstrate that the proposed method effectively addresses the multi-room rearrangement problem.

Published

2024-03-24

How to Cite

Mirakhor, K., Ghosh, S., Das, D., & Bhowmick, B. (2024). Task Planning for Object Rearrangement in Multi-Room Environments. Proceedings of the AAAI Conference on Artificial Intelligence, 38(9), 10350-10357. https://doi.org/10.1609/aaai.v38i9.28902

Issue

Section

Intelligent Robots (ROB)