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Navigation In Urban Environments Amongst Pedestrians Using Multi-Objective Deep Reinforcement Learning (2110.05205v1)

Published 11 Oct 2021 in cs.RO and stat.ML

Abstract: Urban autonomous driving in the presence of pedestrians as vulnerable road users is still a challenging and less examined research problem. This work formulates navigation in urban environments as a multi objective reinforcement learning problem. A deep learning variant of thresholded lexicographic Q-learning is presented for autonomous navigation amongst pedestrians. The multi objective DQN agent is trained on a custom urban environment developed in CARLA simulator. The proposed method is evaluated by comparing it with a single objective DQN variant on known and unknown environments. Evaluation results show that the proposed method outperforms the single objective DQN variant with respect to all aspects.

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Authors (3)
  1. Niranjan Deshpande (2 papers)
  2. Dominique Vaufreydaz (21 papers)
  3. Anne Spalanzani (8 papers)
Citations (7)