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simmediummanipulation-datametric · varies

CEI: A Unified Interface for Cross-Embodiment Visuomotor Policy Learning in 3D Space

Description

Robotic foundation models trained on large-scale manipulation datasets have shown promise in learning generalist policies, but they often overfit to specific viewpoints, robot arms, and especially parallel-jaw grippers due to dataset biases. To address this limitation, we propose Cross-Embodiment Interface (\CEI), a framework for cross-embodiment learning that enables the transfer of demonstrations across different robot arm and end-effector morphologies. \CEI introduces the concept of \textit{f

Source

http://arxiv.org/abs/2601.09163v1