2021
DOI: 10.48550/arxiv.2112.12465
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Missing Velocity in Dynamic Obstacle Avoidance based on Deep Reinforcement Learning

Abstract: We introduce a novel approach to dynamic obstacle avoidance based on Deep Reinforcement Learning by defining a traffic type independent environment with variable complexity. Filling a gap in the current literature, we thoroughly investigate the effect of missing velocity information on an agent's performance in obstacle avoidance tasks. This is a crucial issue in practice since several sensors yield only positional information of objects or vehicles. We evaluate frequently-applied approaches in scenarios of pa… Show more

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