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A Review of End-to-End Autonomous Driving in Urban Environments

Daniel Coelho, Miguel Oliveira

2022IEEE Access61 citationsDOIOpen Access PDF

Abstract

Autonomous driving in urban environments requires intelligent systems that are able to deal with complex and unpredictable scenarios. Traditional modular approaches focus on dividing the driving task into standard modules, and then use rule-based methods to connect those different modules. As such, these approaches require a significant effort to design architectures that combine all system components, and are often prone to error propagation throughout the pipeline. Recently, end-to-end autonomous driving systems have formulated the autonomous driving problem as an end-to-end learning process, with the goal of developing a policy that transforms sensory data into vehicle control commands. Despite promising results, the majority of end-to-end works in autonomous driving focus on simple driving tasks, such as lane-following, which do not fully capture the intricacies of driving in urban environments. The main contribution of this paper is to provide a detailed comparison between end-to-end autonomous driving systems that tackle urban environments. This analysis comprises two stages: a) a description of the main characteristics of the successful end-to-end approaches in urban environments; b) a quantitative comparison based on two CARLA simulator benchmarks (<i>CoRL2017</i> and <i>NoCrash</i>). Beyond providing a detailed overview of the existent approaches, we conclude this work with the most promising aspects of end-to-end autonomous driving approaches suitable for urban environments.

Topics & Concepts

End-to-end principleComputer scienceEnd-user developmentEnd userComputer networkWorld Wide WebAutonomous Vehicle Technology and SafetyHuman-Automation Interaction and SafetyTransportation and Mobility Innovations
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