Home /Research /Perception-Driven Sparse Graphs for Optimal Motion Planning
PERCEPTION

Perception-Driven Sparse Graphs for Optimal Motion Planning

Thomas Sayre-McCord, Sertaç Karaman

Year
2018
Citations
2

Abstract

Most existing motion planning algorithms assume that a map (of some quality) is fully determined prior to generating a motion plan. In many emerging applications of robotics, e.g., fast-moving agile aerial robots with constrained embedded computational platforms and visual sensors, dense maps of the world are not immediately available, and they are computationally expensive to construct. We propose a new algorithm for generating plan graphs which couples the perception and motion planning processes for computational efficiency. In a nutshell, the proposed algorithm iteratively switches between the planning sub-problem and the mapping sub-problem, each updating based on the other until a valid trajectory is found. The resulting trajectory retains a provable property of providing an optimal trajectory with respect to the full (unmapped) environment, while utilizing only a fraction of the sensing data in computational experiments.

Keywords

Computer scienceTrajectoryMotion planningPlan (archaeology)Artificial intelligenceRoboticsMotion (physics)Property (philosophy)RobotConstruct (python library)

Related papers

Browse all PERCEPTION papers