Home /Research /Vision-Based Reactive Temporal Logic Motion Planning for Quadruped Robots in Unstructured Dynamic Environments
LOCOMOTION

Vision-Based Reactive Temporal Logic Motion Planning for Quadruped Robots in Unstructured Dynamic Environments

Zhangli Zhou, Ziyang Chen, Mingyu Cai, Zhijun Li, Zhen Kan, Chun‐Yi Su

Year
2023
Citations
17

Abstract

Temporal logic-based motion planning has been extensively studied to address complex robotic tasks. However, existing works primarily focus on static environments or assume the robot has full observations of the environment. This limits their practical applications since real-world environments are often dynamic, and robots may suffer from partial observations. To tackle these issues, this study proposes a framework for vision-based reactive temporal logic motion planning (V-RTLMP) for robots integrated with LiDAR sensing. The V-RTLMP is designed to perform high-level linear temporal logic (LTL) tasks in unstructured dynamic environments. The framework comprises two modules: offline preplanning and online reactive planning. Given LTL specifications, the preplanning phase generates a reference trajectory over the continuous workspace via sampling-based methods using prior environmental knowledge. The online reactive module dynamically adjusts the robot trajectory based on real-time visual perception to adapt to environmental changes. Extensive numerical simulations and real-world experiments using a quadruped robot demonstrate the effectiveness of the proposed vision-based reactive motion planning.

Keywords

WorkspaceRobotComputer scienceTrajectoryTemporal logicMotion planningLinear temporal logicArtificial intelligenceComputer visionMotion (physics)

Related papers

Browse all LOCOMOTION papers