NaviFormer uses a Transformer architecture inside deep reinforcement learning to jointly predict high-level routes and low-level collision-free trajectories for holistic navigation.
Mapper: Multi-agent path planning with evolutionary reinforcement learning in mixed dynamic environments,
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NaviFormer: A Deep Reinforcement Learning Transformer-like Model to Holistically Solve the Navigation Problem
NaviFormer uses a Transformer architecture inside deep reinforcement learning to jointly predict high-level routes and low-level collision-free trajectories for holistic navigation.