2022
DOI: 10.48550/arxiv.2203.04951
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Learning from Physical Human Feedback: An Object-Centric One-Shot Adaptation Method

Abstract: For robots to be effectively deployed in novel environments and tasks, they must be able to understand the feedback expressed by humans during intervention. This can either correct undesirable behavior or indicate additional preferences. Existing methods either require repeated episodes of interactions or assume prior known reward features, which is data-inefficient and can hardly transfer to new tasks. We relax these assumptions by describing human tasks in terms of objectcentric sub-tasks and interpreting ph… Show more

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