Publication | Open Access
From perception to decision: A data-driven approach to end-to-end motion planning for autonomous ground robots
422
Citations
25
References
2017
Year
Unknown Venue
Artificial IntelligenceEngineeringField RoboticsIntelligent RoboticsIntelligent SystemsEnd-to-end Motion PlanningTrajectory PlanningData ScienceSystems EngineeringKinematicsRobot LearningRobotics PerceptionHealth SciencesPath PlanningRobot Motion PlanningAutonomous NavigationComplex MappingAutonomous Ground RobotsMotion PlanningAutomationSupervised Model TrainingPlanningRoboticsData-driven Approach
Learning from demonstration for motion planning is an ongoing research topic. In this paper we present a model that is able to learn the complex mapping from raw 2D-laser range findings and a target position to the required steering commands for the robot. To our best knowledge, this work presents the first approach that learns a target-oriented end-to-end navigation model for a robotic platform. The supervised model training is based on expert demonstrations generated in simulation with an existing motion planner. We demonstrate that the learned navigation model is directly transferable to previously unseen virtual and, more interestingly, real-world environments. It can safely navigate the robot through obstacle-cluttered environments to reach the provided targets. We present an extensive qualitative and quantitative evaluation of the neural network-based motion planner, and compare it to a grid-based global approach, both in simulation and in real-world experiments.
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