Papers
arxiv:2505.08787

UniSkill: Imitating Human Videos via Cross-Embodiment Skill Representations

Published on May 13
· Submitted by HanjungKim on May 15
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Abstract

Mimicry is a fundamental learning mechanism in humans, enabling individuals to learn new tasks by observing and imitating experts. However, applying this ability to robots presents significant challenges due to the inherent differences between human and robot embodiments in both their visual appearance and physical capabilities. While previous methods bridge this gap using cross-embodiment datasets with shared scenes and tasks, collecting such aligned data between humans and robots at scale is not trivial. In this paper, we propose UniSkill, a novel framework that learns embodiment-agnostic skill representations from large-scale cross-embodiment video data without any labels, enabling skills extracted from human video prompts to effectively transfer to robot policies trained only on robot data. Our experiments in both simulation and real-world environments show that our cross-embodiment skills successfully guide robots in selecting appropriate actions, even with unseen video prompts. The project website can be found at: https://kimhanjung.github.io/UniSkill.

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edited about 19 hours ago

Learning from human videos is a promising direction for addressing data scarcity in robot learning, but existing methods rely on human-robot alignment or intermediate representations (e.g., trajectories), limiting scalability. How can we leverage large-scale video datasets—whether from robots or humans—without relying on any labels or data collection constraints? We propose UniSkill, a framework that learns embodiment-agnostic skill representations from large-scale, unlabeled, cross-embodiment video data. These representations enable robot policies trained only on robot data to imitate skills from human video prompts and support flexible sub-goal generation, regardless of the demonstration's embodiment.

Project Page: https://kimhanjung.github.io/UniSkill/
X Post: https://x.com/KimD0ing/status/1922642025381306706

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