Litcius/Paper detail

Learning-based Path Planning for Autonomous Exploration of Subterranean Environments

Russell Reinhart, Tung Dang, Emily Hand, Christos Papachristos, Kostas Alexis

202052 citationsDOI

Abstract

In this work we present a new methodology on learning-based path planning for autonomous exploration of subterranean environments using aerial robots. Utilizing a recently proposed graph-based path planner as a "training expert" and following an approach relying on the concepts of imitation learning, we derive a trained policy capable of guiding the robot to autonomously explore underground mine drifts and tunnels. The algorithm utilizes only a short window of range data sampled from the onboard LiDAR and achieves an exploratory behavior similar to that of the training expert with a more than an order of magnitude reduction in computational cost, while simultaneously relaxing the need to maintain a consistent and online reconstructed map of the environment. The trained path planning policy is extensively evaluated both in simulation and experimentally within field tests relating to the autonomous exploration of underground mines.

Topics & Concepts

PlannerMotion planningComputer scienceRobotPath (computing)LidarArtificial intelligenceField (mathematics)Range (aeronautics)GraphMachine learningReal-time computingEngineeringRemote sensingTheoretical computer scienceMathematicsProgramming languageGeologyPure mathematicsAerospace engineeringRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationIndoor and Outdoor Localization Technologies
Learning-based Path Planning for Autonomous Exploration of Subterranean Environments | Litcius