ROMar 20

Latent Action Diffusion for Cross-Embodiment Manipulation

ETH ZurichMITStanford
arXiv:2506.1460820.816 citationsh-index: 25
Predicted impact top 26% in RO · last 90 daysOriginality Incremental advance
AI Analysis

This work solves the challenge of skill transfer across diverse robot embodiments, enabling more scalable robotic learning, though it is incremental as it builds on existing diffusion and contrastive learning methods.

The paper tackles the problem of cross-embodiment manipulation by addressing data scarcity and heterogeneous action spaces across different robot end-effectors, achieving up to 25.3% improved manipulation success rates through a unified latent action space.

End-to-end learning is emerging as a powerful paradigm for robotic manipulation, but its effectiveness is limited by data scarcity and the heterogeneity of action spaces across robot embodiments. In particular, diverse action spaces across different end-effectors create barriers for cross-embodiment learning and skill transfer. We address this challenge through diffusion policies learned in a latent action space that unifies diverse end-effector actions. We first show that we can learn a semantically aligned latent action space for anthropomorphic robotic hands, a human hand, and a parallel jaw gripper using encoders trained with a contrastive loss. Second, we show that by using our proposed latent action space for co-training on manipulation data from different end-effectors, we can utilize a single policy for multi-robot control and obtain up to 25.3% improved manipulation success rates, indicating successful skill transfer despite a significant embodiment gap. Our approach using latent cross-embodiment policies presents a new method to unify different action spaces across embodiments, enabling efficient multi-robot control and data sharing across robot setups. This unified representation significantly reduces the need for extensive data collection for each new robot morphology, accelerates generalization across embodiments, and ultimately facilitates more scalable and efficient robotic learning.

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