Learning Affordance Landscapes for Interaction Exploration in 3D Environments
–Neural Information Processing Systems
Embodied agents operating in human spaces must be able to master how their environment works: what objects can the agent use, and how can it use them? We introduce a reinforcement learning approach for exploration for interaction, whereby an embodied agent autonomously discovers the affordance landscape of a new unmapped 3D environment (such as an unfamiliar kitchen).
Neural Information Processing Systems
Oct-2-2025, 05:10:36 GMT
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