MuJoCo MPC for Humanoid Control: Evaluation on HumanoidBench
2024-08-01Code Available5· sign in to hype
Moritz Meser, Aditya Bhatt, Boris Belousov, Jan Peters
Code Available — Be the first to reproduce this paper.
ReproduceCode
- github.com/google-deepmind/mujoco_mpcOfficialnone★ 1,580
Abstract
We tackle the recently introduced benchmark for whole-body humanoid control HumanoidBench using MuJoCo MPC. We find that sparse reward functions of HumanoidBench yield undesirable and unrealistic behaviors when optimized; therefore, we propose a set of regularization terms that stabilize the robot behavior across tasks. Current evaluations on a subset of tasks demonstrate that our proposed reward function allows achieving the highest HumanoidBench scores while maintaining realistic posture and smooth control signals. Our code is publicly available and will become a part of MuJoCo MPC, enabling rapid prototyping of robot behaviors.