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ReWiND: Language-Guided Rewards Teach Robot Policies without New Demonstrations

ReWiND: Language-Guided Rewards Teach Robot Policies without New Demonstrations

来源:Arxiv_logoArxiv
英文摘要

We introduce ReWiND, a framework for learning robot manipulation tasks solely from language instructions without per-task demonstrations. Standard reinforcement learning (RL) and imitation learning methods require expert supervision through human-designed reward functions or demonstrations for every new task. In contrast, ReWiND starts from a small demonstration dataset to learn: (1) a data-efficient, language-conditioned reward function that labels the dataset with rewards, and (2) a language-conditioned policy pre-trained with offline RL using these rewards. Given an unseen task variation, ReWiND fine-tunes the pre-trained policy using the learned reward function, requiring minimal online interaction. We show that ReWiND's reward model generalizes effectively to unseen tasks, outperforming baselines by up to 2.4x in reward generalization and policy alignment metrics. Finally, we demonstrate that ReWiND enables sample-efficient adaptation to new tasks, beating baselines by 2x in simulation and improving real-world pretrained bimanual policies by 5x, taking a step towards scalable, real-world robot learning. See website at https://rewind-reward.github.io/.

Jiahui Zhang、Yusen Luo、Abrar Anwar、Sumedh Anand Sontakke、Joseph J Lim、Jesse Thomason、Erdem Biyik、Jesse Zhang

计算技术、计算机技术

Jiahui Zhang,Yusen Luo,Abrar Anwar,Sumedh Anand Sontakke,Joseph J Lim,Jesse Thomason,Erdem Biyik,Jesse Zhang.ReWiND: Language-Guided Rewards Teach Robot Policies without New Demonstrations[EB/OL].(2025-05-16)[2025-06-27].https://arxiv.org/abs/2505.10911.点此复制

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