Litcius/Paper detail

Learning Interactive Driving Policies via Data-driven Simulation

Tsun-Hsuan Wang, Alexander Amini, Wilko Schwarting, Igor Gilitschenski, Sertaç Karaman, Daniela Rus

20222022 International Conference on Robotics and Automation (ICRA)17 citationsDOI

Abstract

Data-driven simulators promise high data-efficiency for driving policy learning. When used for modelling interactions, this data-efficiency becomes a bottleneck: small underlying datasets often lack interesting and challenging edge cases for learning interactive driving. We address this challenge by proposing a data-driven simulation engine† that uses inpainted ado vehicles for learning robust driving policies. Thus, our approach can be used to learn policies that involve multi-agent interactions and allows for training via state-of-the-art policy learning methods. We evaluate the approach for learning standard interaction scenarios in driving. In extensive experiments, our work demonstrates that the resulting policies can be directly transferred to a full-scale autonomous vehicle without making use of any traditional sim-to-real transfer techniques such as domain randomization.

Topics & Concepts

Computer scienceBottleneckDomain (mathematical analysis)Policy learningEnhanced Data Rates for GSM EvolutionTransfer of learningState (computer science)Machine learningArtificial intelligenceMathematical analysisMathematicsAlgorithmEmbedded systemReinforcement Learning in RoboticsAutonomous Vehicle Technology and SafetyEnergy, Environment, and Transportation Policies