Publication | Open Access
A behavioral planning framework for autonomous driving
122
Citations
15
References
2014
Year
Unknown Venue
EngineeringVehicle ControlReference Planning LayerAutonomous Vehicle NavigationIntelligent SystemsTrajectory PlanningAutonomous VehiclesSystems EngineeringRobot LearningPath PlanningBehavioral SciencesAutonomous DrivingBehavioral Planning FrameworkNovel Planning FrameworkBehavioral Planning LayerAi PlanningAutomationPlanningRobotics
In this paper, we propose a novel planning framework that can greatly improve the level of intelligence and driving quality of autonomous vehicles. A reference planning layer first generates kinematically and dynamically feasible paths assuming no obstacles on the road, then a behavioral planning layer takes static and dynamic obstacles into account. Instead of directly commanding a desired trajectory, it searches for the best directives for the controller, such as lateral bias and distance keeping aggressiveness. It also considers the social cooperation between the autonomous vehicle and surrounding cars. Based on experimental results from both simulation and a real autonomous vehicle platform, the proposed behavioral planning architecture improves the driving quality considerably, with a 90.3% reduction of required computation time in representative scenarios.
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