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Design of an Autonomous Racecar: Perception, State Estimation and System Integration

Authors :
Valls, Miguel de la Iglesia
Hendrikx, Hubertus Franciscus Cornelis
Reijgwart, Victor
Meier, Fabio Vito
Sa, Inkyu
Dubé, Renaud
Gawel, Abel Roman
Bürki, Mathias
Siegwart, Roland
Publication Year :
2018

Abstract

This paper introduces fl\"uela driverless: the first autonomous racecar to win a Formula Student Driverless competition. In this competition, among other challenges, an autonomous racecar is tasked to complete 10 laps of a previously unknown racetrack as fast as possible and using only onboard sensing and computing. The key components of fl\"uela's design are its modular redundant sub-systems that allow robust performance despite challenging perceptual conditions or partial system failures. The paper presents the integration of key components of our autonomous racecar, i.e., system design, EKF-based state estimation, LiDAR-based perception, and particle filter-based SLAM. We perform an extensive experimental evaluation on real-world data, demonstrating the system's effectiveness by outperforming the next-best ranking team by almost half the time required to finish a lap. The autonomous racecar reaches lateral and longitudinal accelerations comparable to those achieved by experienced human drivers.<br />Comment: 8 pages, 10 figures, accepted to International Conference on Robotics and Automation | 21-25 May 2018 | Brisbane

Subjects

Subjects :
Computer Science - Robotics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1804.03252
Document Type :
Working Paper