Publication | Closed Access
Context and Intention Aware Planning for Urban Driving
27
Citations
21
References
2019
Year
Unknown Venue
Artificial IntelligenceEngineeringAdvanced Driver-assistance SystemIntelligent SystemsAutonomous Driving SystemUrban DrivingSocial SciencesIntelligent Traffic ManagementData ScienceAutonomous VehiclesSystems EngineeringIntention RecognitionRobot LearningTransportation EngineeringEnvironment UncertaintiesIntention Aware PlanningDesignUrban PlanningComputer ScienceAutonomous DrivingAutomationPlanning PracticePlanningRoad Traffic Control
We present a novel autonomous driving system which uses the road contextual information and intentions of other road users for urban driving. Unlike highways, urban environments require the drivers to follow traffic signs and signals while using their best judgment for anomalous situations. In such scenarios, a self-driving car needs to understand and take into account the uncertainties in the environment to plan and decide its action accordingly. Our planner models the intentions of the surrounding vehicles leveraging a neural network, and integrates the road contextual information to reduce its environment uncertainties and also speed up the decision making process. We validate our planner in simulation and in a real urban environment. Our experimental results show that integrating intention inference and road contextual information for prediction, planning and decision making help improve safety and efficiency of our autonomous driving system.
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