ROAICVLGOct 24, 2023

Human-in-the-Loop Task and Motion Planning for Imitation Learning

MIT
arXiv:2310.16014v135 citationsh-index: 34
Originality Highly original
AI Analysis

This addresses the time-consuming and labor-intensive nature of imitation learning for robotics, particularly in contact-rich tasks, by combining human teleoperation with automated planning to improve data collection efficiency.

The paper tackles the problem of efficiently collecting human demonstrations for imitation learning in contact-rich, long-horizon robotic tasks by introducing Human-in-the-Loop Task and Motion Planning (HITL-TAMP), which allows a human teleoperator to manage a fleet of robots, resulting in over 3x more demos collected in the same time and training proficient agents from just 10 minutes of non-expert data.

Imitation learning from human demonstrations can teach robots complex manipulation skills, but is time-consuming and labor intensive. In contrast, Task and Motion Planning (TAMP) systems are automated and excel at solving long-horizon tasks, but they are difficult to apply to contact-rich tasks. In this paper, we present Human-in-the-Loop Task and Motion Planning (HITL-TAMP), a novel system that leverages the benefits of both approaches. The system employs a TAMP-gated control mechanism, which selectively gives and takes control to and from a human teleoperator. This enables the human teleoperator to manage a fleet of robots, maximizing data collection efficiency. The collected human data is then combined with an imitation learning framework to train a TAMP-gated policy, leading to superior performance compared to training on full task demonstrations. We compared HITL-TAMP to a conventional teleoperation system -- users gathered more than 3x the number of demos given the same time budget. Furthermore, proficient agents (75\%+ success) could be trained from just 10 minutes of non-expert teleoperation data. Finally, we collected 2.1K demos with HITL-TAMP across 12 contact-rich, long-horizon tasks and show that the system often produces near-perfect agents. Videos and additional results at https://hitltamp.github.io .

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