← Back to Benchmarks
simmediumimitationmetric · varies

Action-Free Reasoning for Policy Generalization

Description

End-to-end imitation learning offers a promising approach for training robot policies. However, generalizing to new settings remains a significant challenge. Although large-scale robot demonstration datasets have shown potential for inducing generalization, they are resource-intensive to scale. In contrast, human video data is abundant and diverse, presenting an attractive alternative. Yet, these human-video datasets lack action labels, complicating their use in imitation learning. Existing meth

Source

http://arxiv.org/abs/2502.03729v2