首页 /研究 /Goal-Oriented Obstacle Avoidance with Deep Reinforcement Learning in Continuous Action Space
LEARNING

Goal-Oriented Obstacle Avoidance with Deep Reinforcement Learning in Continuous Action Space

Reinis Cimurs, Jin Han Lee, Il Hong Suh

发表年份
2020
引用次数
44
访问权限
开放获取

摘要

In this paper, we propose a goal-oriented obstacle avoidance navigation system based on deep reinforcement learning that uses depth information in scenes, as well as goal position in polar coordinates as state inputs. The control signals for robot motion are output in a continuous action space. We devise a deep deterministic policy gradient network with the inclusion of depth-wise separable convolution layers to process the large amounts of sequential depth image information. The goal-oriented obstacle avoidance navigation is performed without prior knowledge of the environment or a map. We show that through the proposed deep reinforcement learning network, a goal-oriented collision avoidance model can be trained end-to-end without manual tuning or supervision by a human operator. We train our model in a simulation, and the resulting network is directly transferred to other environments. Experiments show the capability of the trained network to navigate safely around obstacles and arrive at the designated goal positions in the simulation, as well as in the real world. The proposed method exhibits higher reliability than the compared approaches when navigating around obstacles with complex shapes. The experiments show that the approach is capable of avoiding not only static, but also dynamic obstacles.

关键词

Reinforcement learningObstacle avoidanceComputer scienceCollision avoidanceArtificial intelligenceObstacleProcess (computing)Action (physics)Reliability (semiconductor)State space

相关论文

查看 LEARNING 分类全部论文