2022
DOI: 10.48550/arxiv.2211.09019
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Learning Reward Functions for Robotic Manipulation by Observing Humans

Abstract: Observing a human demonstrator manipulate objects provides a rich, scalable and inexpensive source of data for learning robotic policies. However, transferring skills from human videos to a robotic manipulator poses several challenges, not least a difference in action and observation spaces. In this work, we use unlabeled videos of humans solving a wide range of manipulation tasks to learn a task-agnostic reward function for robotic manipulation policies. Thanks to the diversity of this training data, the lear… Show more

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