Multi-Embodiment Locomotion at Scale with extreme Embodiment Randomization
By: Nico Bohlinger, Jan Peters
Potential Business Impact:
Lets one robot brain control many different robot bodies.
We present a single, general locomotion policy trained on a diverse collection of 50 legged robots. By combining an improved embodiment-aware architecture (URMAv2) with a performance-based curriculum for extreme Embodiment Randomization, our policy learns to control millions of morphological variations. Our policy achieves zero-shot transfer to unseen real-world humanoid and quadruped robots.
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