Home /Research /Perception-Action Coupling Target Tracking Control for a Snake Robot via Reinforcement Learning
LOCOMOTION

Perception-Action Coupling Target Tracking Control for a Snake Robot via Reinforcement Learning

Zhenshan Bing, Christian Lemke, Fabric O. Morin, Zhuangyi Jiang, Long Cheng, Kai Huang, Alois Knoll

Year
2020
Citations
24
Access
Open access

Abstract

Visual-guided locomotion for snake-like robots is a challenging task, since it involves not only the complex body undulation with many joints, but also a joint pipeline that connects the vision and the locomotion. Meanwhile, it is usually difficult to jointly coordinate these two separate sub-tasks as this requires time-consuming and trial-and-error tuning. In this paper, we introduce a novel approach for solving target tracking tasks for a snake-like robot as a whole using a model-free reinforcement learning (RL) algorithm. This RL-based controller directly maps the visual observations to the joint positions of the snake-like robot in an end-to-end fashion instead of dividing the process into a series of sub-tasks. With a novel customized reward function, our RL controller is trained in a dynamically changing track scenario. The controller is evaluated in four different tracking scenarios and the results show excellent adaptive locomotion ability to the unpredictable behavior of the target. Meanwhile, the results also prove that the RL-based controller outperforms the traditional model-based controller in terms of tracking accuracy.

Keywords

Computer scienceReinforcement learningController (irrigation)RobotArtificial intelligenceProcess (computing)Computer visionTracking (education)Pipeline (software)Task (project management)

Related papers

Browse all LOCOMOTION papers