Real-World Reinforcement Learning of Active Perception Behaviors
–Neural Information Processing Systems
A robot's instantaneous sensory observations do not always reveal task-relevant state information. Under such partial observability, optimal behavior typically involves explicitly acting to gain the missing information. Today's standard robot learning techniques struggle to produce such active perception behaviors. We propose a simple real-world robot learning recipe to efficiently train active perception policies.
Neural Information Processing Systems
Jun-21-2026, 13:18:37 GMT