Training manipulation policies for humanoid robots with
diverse data enhances their robustness and generalization across tasks and platforms. However, learning solely from robot demonstrations is labor-intensive, requiring expensive tele-operated data
collection which is difficult to scale. This paper investigates a more scalable data source, egocentric human demonstrations, to serve as cross-embodiment training data for robot learning. We mitigate the embodiment gap between humanoids and humans
from both the data and modeling perspectives. We collect an egocentric task-oriented dataset (PH2D)…
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