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Berkeley Humanoid: A Research Platform for Learning-Based Control

Qiayuan Liao, Bike Zhang, Xuanyu Huang, Xiaoyu Huang, Zhongyu Li, Koushil Sreenath

Year
2025
Citations
14

Abstract

We introduce Berkeley Humanoid, a reliable and low-cost mid-scale humanoid research platform for learningbased control. Our lightweight, in-house-built robot is designed specifically for learning algorithms with accurate simulation, low simulation complexity, anthropomorphic motion, and high reliability against falls. The narrow sim-to-real gap enables agile and robust locomotion across various terrains in outdoor environments, achieved with a simple reinforcement learning controller using light domain randomization. Furthermore, we demonstrate the robot traversing for hundreds of meters, walking on a steep unpaved trail, and hopping with single and double legs as a testimony to its high performance in dynamic walking. Capable of omnidirectional locomotion and withstanding large perturbations with a compact setup, our system aims for rapid sim-to-real deployment of learningbased humanoid systems. Please check our website https:// berkeley-humanoid.com/ and code https://github. com/HybridRobotics/isaac_berkeley_humanoid/.

Keywords

Computer scienceHumanoid robotControl (management)Human–computer interactionArtificial intelligenceRobot

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