GMT: General Motion Tracking for Humanoid Whole-Body Control
About
The ability to track general whole-body motions in the real world is a useful way to build general-purpose humanoid robots. However, achieving this can be challenging due to the temporal and kinematic diversity of the motions, the policy's capability, and the difficulty of coordination of the upper and lower bodies. To address these issues, we propose GMT, a general and scalable motion-tracking framework that trains a single unified policy to enable humanoid robots to track diverse motions in the real world. GMT is built upon two core components: an Adaptive Sampling strategy and a Motion Mixture-of-Experts (MoE) architecture. The Adaptive Sampling automatically balances easy and difficult motions during training. The MoE ensures better specialization of different regions of the motion manifold. We show through extensive experiments in both simulation and the real world the effectiveness of GMT, achieving state-of-the-art performance across a broad spectrum of motions using a unified general policy. Videos and additional information can be found at https://gmt-humanoid.github.io.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Humanoid motion tracking | MotionX (test) | Success Rate93 | 9 | |
| Motion Tracking | D_eval based on AMASS and LAFAN1 retargeted and filtered (test) | MPJPE (mm)67.09 | 7 | |
| Motion Tracking | D small retargeted and filtered (train) | Empkpe53.13 | 7 | |
| Motion Tracking | Nymeria (test) | Success Rate97 | 6 | |
| human motion tracking | GenMimicBench 1.0 (simulation) | SR4.29 | 6 | |
| Motion Tracking | Standard Kicks | MPJPE59.77 | 5 | |
| Motion Tracking | Stylized Kicks | MPJPE64.22 | 5 | |
| Whole-body motion tracking | Custom Inertial Motion Capture Dataset 1.0 (test) | SR92 | 4 | |
| Humanoid motion tracking | AMASS (train) | Success Rate77.55 | 3 |