SCDP: Learning Humanoid Locomotion from Partial Observations via Mixed-Observation Distillation
Milo Carroll, Tianhu Peng, Lingfan Bao, Chengxu Zhou, Zhibin Li
- 发表年份
- 2026
- 访问权限
- 开放获取
摘要
Distilling humanoid locomotion control from offline datasets into deployable policies remains a challenge, as existing methods rely on privileged full-body states that require complex and often unreliable state estimation. We present Sensor-Conditioned Diffusion Policies (SCDP) that enables humanoid locomotion using only onboard sensors, eliminating the need for explicit state estimation. SCDP decouples sensing from supervision through mixed-observation training: diffusion model conditions on sensor histories while being supervised to predict privileged future state-action trajectories, enforcing the model to infer the motion dynamics under partial observability. We further develop restricted denoising, context distribution alignment, and context-aware attention masking to encourage implicit state estimation within the model and to prevent train-deploy mismatch. We validate SCDP on velocity-commanded locomotion and motion reference tracking tasks. In simulation, SCDP achieves near-perfect success on velocity control (99-100%) and 93% tracking success in AMASS test set, performing comparable to privileged baselines while using only onboard sensors. Finally, we deploy the trained policy on a real G1 humanoid at 50 Hz, demonstrating robust real robot locomotion without external sensing or state estimation.
关键词
相关论文
基于非线性滑模模型预测控制与自适应跟随转向及动静态约束的六轮独立驱动/四轮独立转向无人地面车辆轨迹跟踪控制
Shengyang Lu, Guanpeng Chen, Lijing Zhao 等 5 位作者
Robotics and Autonomous Systems · 2026
仿生水下机器人:材料、设计、控制与应用进展
Dilip Muchhala, Pramod Kumar Maurya, Adarsh Raut 等 6 位作者
Robotics and Autonomous Systems · 2026
刚柔混合连杆人形机器人的建模与控制
Zewen He, Taiki Ishigaki, Ko Yamamoto
Robotics and Autonomous Systems · 2026
人-外骨骼-助行器系统的人工推动自适应协调控制
Xinhao Zhang, Chen Yang, Chaobin Zou 等 7 位作者
Robotics and Autonomous Systems · 2026