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Improving Autonomous Robotic Navigation Using Imitation Learning

Brian César-Tondreau, Garrett Warnell, Ethan Stump, Kevin Kochersberger, Nicholas R. Waytowich

2021Frontiers in Robotics and AI21 citationsDOIOpen Access PDF

Abstract

Autonomous navigation to a specified waypoint is traditionally accomplished with a layered stack of global path planning and local motion planning modules that generate feasible and obstacle-free trajectories. While these modules can be modified to meet task-specific constraints and user preferences, current modification procedures require substantial effort on the part of an expert roboticist with a great deal of technical training. In this paper, we simplify this process by inserting a Machine Learning module between the global path planning and local motion planning modules of an off-the shelf navigation stack. This model can be trained with human demonstrations of the preferred navigation behavior, using a training procedure based on Behavioral Cloning, allowing for an intuitive modification of the navigation policy by non-technical users to suit task-specific constraints. We find that our approach can successfully adapt a robot's navigation behavior to become more like that of a demonstrator. Moreover, for a fixed amount of demonstration data, we find that the proposed technique compares favorably to recent baselines with respect to both navigation success rate and trajectory similarity to the demonstrator.

Topics & Concepts

Computer scienceWaypointMotion planningTask (project management)Obstacle avoidanceArtificial intelligenceProcess (computing)TrajectoryMobile robot navigationHuman–computer interactionObstacleRobotMobile robotComputer visionReal-time computingRobot controlSystems engineeringLawPhysicsPolitical scienceOperating systemAstronomyEngineeringRobotic Path Planning AlgorithmsReinforcement Learning in RoboticsRobot Manipulation and Learning
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