Publication | Closed Access
Learning how to drive in a real world simulation with deep Q-Networks
127
Citations
29
References
2017
Year
Unknown Venue
Artificial IntelligenceVehicle AgentEngineeringDeep Reinforcement LearningReal World SimulationSystems EngineeringSimulationPhysics SimulationComputer ScienceIntelligent SystemsRobot LearningLearning ControlDeep LearningRoboticsWorld ModelMulti-agent LearningAutonomous DrivingDeep Q-networks
We present a reinforcement learning approach using Deep Q-Networks to steer a vehicle in a 3D physics simulation. Relying solely on camera image input the approach directly learns steering the vehicle in an end-to-end manner. The system is able to learn human driving behavior without the need of any labeled training data. An action-based reward function is proposed, which is motivated by a potential use in real world reinforcement learning scenarios. Compared to a naive distance-based reward function, it improves the overall driving behavior of the vehicle agent. The agent is even able to reach comparable to human driving performance on a previously unseen track in our simulation environment.
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