HOVER: Versatile Neural Whole-Body Controller for Humanoid Robots
About
Humanoid whole-body control requires adapting to diverse tasks such as navigation, loco-manipulation, and tabletop manipulation, each demanding a different mode of control. For example, navigation relies on root velocity tracking, while tabletop manipulation prioritizes upper-body joint angle tracking. Existing approaches typically train individual policies tailored to a specific command space, limiting their transferability across modes. We present the key insight that full-body kinematic motion imitation can serve as a common abstraction for all these tasks and provide general-purpose motor skills for learning multiple modes of whole-body control. Building on this, we propose HOVER (Humanoid Versatile Controller), a multi-mode policy distillation framework that consolidates diverse control modes into a unified policy. HOVER enables seamless transitions between control modes while preserving the distinct advantages of each, offering a robust and scalable solution for humanoid control across a wide range of modes. By eliminating the need for policy retraining for each control mode, our approach improves efficiency and flexibility for future humanoid applications.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Humanoid Control | AMASS IsaacLab ID (test) | Success Rate71.2 | 5 | |
| Humanoid Control | AMASS IsaacLab + DR ID (test) | MPJPE (Egocentric, mm)375 | 5 | |
| Humanoid Control | AMASS Genesis OOD (test) | Ego MPJPE (mm)722 | 5 | |
| Humanoid Control | AMASS Genesis + DR OOD (test) | Eg-MPJPE (mm)746 | 5 |