AI RESEARCH
Whole-Body Mobile Manipulation using Offline Reinforcement Learning on Sub-optimal Controllers
arXiv CS.CV
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ArXi:2604.12509v1 Announce Type: cross Mobile Manipulation (MoMa) of articulated objects, such as opening doors, drawers, and cupboards, demands simultaneous, whole-body coordination between a robot's base and arms. Classical whole-body controllers (WBCs) can solve such problems via hierarchical optimization, but require extensive hand-tuned optimization and remain brittle. Learning-based methods, on the other hand, show strong generalization capabilities but typically rely on expensive whole-body teleoperation data or heavy reward engineering.