DocumentCode
3850673
Title
The Driving School System: Learning Basic Driving Skills From a Teacher in a Real Car
Author
Irene Markelic;Anders Kjaer-Nielsen;Karl Pauwels;Lars Baunegaard With Jensen;Nikolay Chumerin;Aušra Vidugiriene;Minija Tamosiunaite;Alexander Rotter;Marc Van Hulle;Norbert Kruger;Florentin Worgotter
Author_Institution
Georg-August-University Gö
Volume
12
Issue
4
fYear
2011
Firstpage
1135
Lastpage
1146
Abstract
To offer increased security and comfort, advanced driver-assistance systems (ADASs) should consider individual driving styles. Here, we present a system that learns a human´s basic driving behavior and demonstrate its use as ADAS by issuing alerts when detecting inconsistent driving behavior. In contrast to much other work in this area, which is based on or obtained from simulation, our system is implemented as a multithreaded parallel central processing unit (CPU)/graphics processing unit (GPU) architecture in a real car and trained with real driving data to generate steering and acceleration control for road following. It also implements a method for detecting independently moving objects (IMOs) for spotting obstacles. Both learning and IMO detection algorithms are data driven and thus improve above the limitations of model-based approaches. The system´s ability to imitate the teacher´s behavior is analyzed on known and unknown streets, and results suggest its use for steering assistance but limit the use of the acceleration signal to curve negotiation. We propose that this ability to adapt to the driver can lead to better acceptance of ADAS, which is an important sales argument.
Keywords
"Human factors","Vehicle driving","Detection algorithms","Graphics processing unit","Central Processing Unit"
Journal_Title
IEEE Transactions on Intelligent Transportation Systems
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2011.2157690
Filename
5898415
Link To Document