Transformers are Adaptable Task Planners
Every home is different, and every person likes things done in their particular way. Therefore, home robots of the future need to both reason about the sequential nature of day-to-day tasks and generalize to user's preferences. To this end, we propose a Transformer Task Planner(TTP) that learns...
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Zusammenfassung: | Every home is different, and every person likes things done in their
particular way. Therefore, home robots of the future need to both reason about
the sequential nature of day-to-day tasks and generalize to user's preferences.
To this end, we propose a Transformer Task Planner(TTP) that learns high-level
actions from demonstrations by leveraging object attribute-based
representations. TTP can be pre-trained on multiple preferences and shows
generalization to unseen preferences using a single demonstration as a prompt
in a simulated dishwasher loading task. Further, we demonstrate real-world dish
rearrangement using TTP with a Franka Panda robotic arm, prompted using a
single human demonstration. |
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DOI: | 10.48550/arxiv.2207.02442 |