SPACE: Enabling Learning from Cross-Robot Data Toward Generalist Policies
arXiv:2606.24049v1 Announce Type: new Abstract: In robot learning, scaling training datasets across diverse embodiments and environments has become a dominant paradigm for learning generalizable robot policies. These policies are commonly trained via behavior cloning to imitate actions from pre-collected demonstrations. However, since robot actions are tied to the dynamics of the data collection robot, different robots may require different actions to achieve the same motion. This discrepancy hi...
arXiv cs.RO
·Haeone Lee, Byeongguk Jeon, Suchae Jeong, Jian Kim, Kimin Lee
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