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Self-Driving like a Human driver instead of a Robocar: Personalized comfortable driving experience for autonomous vehicles

Authors :
Bae, Il
Moon, Jaeyoung
Jhung, Junekyo
Suk, Ho
Kim, Taewoo
Park, Hyungbin
Cha, Jaekwang
Kim, Jinhyuk
Kim, Dohyun
Kim, Shiho
Publication Year :
2020

Abstract

This paper issues an integrated control system of self-driving autonomous vehicles based on the personal driving preference to provide personalized comfortable driving experience to autonomous vehicle users. We propose an Occupant's Preference Metric (OPM) which is defining a preferred lateral and longitudinal acceleration region with maximum allowable jerk for users. Moreover, we propose a vehicle controller based on control parameters enabling integrated lateral and longitudinal control via preference-aware maneuvering of autonomous vehicles. The proposed system not only provides the criteria for the occupant's driving preference, but also provides a personalized autonomous self-driving style like a human driver instead of a Robocar. The simulation and experimental results demonstrated that the proposed system can maneuver the self-driving vehicle like a human driver by tracking the specified criterion of admissible acceleration and jerk.<br />Comment: 8 pages, 9 figures, NeurIPS 2019 Workshop: Machine Learning for Autonomous Driving (ML4AD)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.03908
Document Type :
Working Paper