Connecting Deep-Reinforcement-Learning-based Obstacle Avoidance with Conventional Global Planners Using Waypoint Generators.
2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2021)
Abstract
Deep Reinforcement Learning has emerged as an efficient dynamic obstacle avoidance method in highly dynamic environments. It has the potential to replace overly conservative or inefficient navigation approaches. However, integrating Deep Reinforcement Learning into existing navigation systems is still an open frontier due to the myopic nature of Deep-Reinforcement-Learning-based navigation, which hinders its widespread integration into current navigation systems. In this paper, we propose the concept of an intermediate planner to interconnect novel Deep-Reinforcement-Learning-based obstacle avoidance with conventional global planning methods using waypoint generation. Therefore, we integrate different waypoint generators into existing navigation systems and compare the joint system against traditional ones. We found an increased performance in terms of safety, efficiency and path smoothness, especially in highly dynamic environments.
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Key words
conventional global planners,reinforcement learning,efficient dynamic obstacle avoidance method,highly dynamic environments,overly conservative navigation approaches,inefficient navigation approaches,widespread integration,current navigation systems,intermediate planner,deep-reinforcement-learning-based obstacle avoidance,conventional global planning methods,waypoint generation,deep-reinforcement-learning-based navigation,waypoint generators
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