MoRE: Mixture of Residual Experts for Humanoid Lifelike Gaits Learning on Complex Terrains
By: Dewei Wang , Xinmiao Wang , Xinzhe Liu and more
Potential Business Impact:
Robots walk like people on any ground.
Humanoid robots have demonstrated robust locomotion capabilities using Reinforcement Learning (RL)-based approaches. Further, to obtain human-like behaviors, existing methods integrate human motion-tracking or motion prior in the RL framework. However, these methods are limited in flat terrains with proprioception only, restricting their abilities to traverse challenging terrains with human-like gaits. In this work, we propose a novel framework using a mixture of latent residual experts with multi-discriminators to train an RL policy, which is capable of traversing complex terrains in controllable lifelike gaits with exteroception. Our two-stage training pipeline first teaches the policy to traverse complex terrains using a depth camera, and then enables gait-commanded switching between human-like gait patterns. We also design gait rewards to adjust human-like behaviors like robot base height. Simulation and real-world experiments demonstrate that our framework exhibits exceptional performance in traversing complex terrains, and achieves seamless transitions between multiple human-like gait patterns.
Similar Papers
Robust Humanoid Walking on Compliant and Uneven Terrain with Deep Reinforcement Learning
Robotics
Robots learn to walk on bumpy, soft ground.
Gait-Adaptive Perceptive Humanoid Locomotion with Real-Time Under-Base Terrain Reconstruction
Robotics
Robots can now climb stairs and cross gaps.
Learning Perceptive Humanoid Locomotion over Challenging Terrain
Robotics
Robots walk better on rough ground.