LEAGUE: Guided Skill Learning and Abstraction for Long-Horizon
Manipulation
- URL: http://arxiv.org/abs/2210.12631v2
- Date: Tue, 22 Aug 2023 03:20:18 GMT
- Title: LEAGUE: Guided Skill Learning and Abstraction for Long-Horizon
Manipulation
- Authors: Shuo Cheng and Danfei Xu
- Abstract summary: Task and Motion Planning approaches excel at solving and generalizing across long-horizon tasks.
They assume predefined skill sets, which limits their real-world applications.
We propose an integrated task planning and skill learning framework named LEAGUE.
We show that the learned skills can be reused to accelerate learning in new tasks domains and transfer to a physical robot platform.
- Score: 16.05029027561921
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To assist with everyday human activities, robots must solve complex
long-horizon tasks and generalize to new settings. Recent deep reinforcement
learning (RL) methods show promise in fully autonomous learning, but they
struggle to reach long-term goals in large environments. On the other hand,
Task and Motion Planning (TAMP) approaches excel at solving and generalizing
across long-horizon tasks, thanks to their powerful state and action
abstractions. But they assume predefined skill sets, which limits their
real-world applications. In this work, we combine the benefits of these two
paradigms and propose an integrated task planning and skill learning framework
named LEAGUE (Learning and Abstraction with Guidance). LEAGUE leverages the
symbolic interface of a task planner to guide RL-based skill learning and
creates abstract state space to enable skill reuse. More importantly, LEAGUE
learns manipulation skills in-situ of the task planning system, continuously
growing its capability and the set of tasks that it can solve. We evaluate
LEAGUE on four challenging simulated task domains and show that LEAGUE
outperforms baselines by large margins. We also show that the learned skills
can be reused to accelerate learning in new tasks domains and transfer to a
physical robot platform.
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