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Prediction of Driver's Intention of Lane Change by Augmenting Sensor Information Using Machine Learning Techniques

Authors
Kim, Il-HwanBong, Jae-HwanPark, JooyoungPark, Shinsuk
Issue Date
6월-2017
Publisher
MDPI
Keywords
advanced driver assistance system (ADAS); lane change; driver' s intention; artificial neural network (ANN); support vector machine (SVM)
Citation
SENSORS, v.17, no.6
Indexed
SCIE
SCOPUS
Journal Title
SENSORS
Volume
17
Number
6
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/83185
DOI
10.3390/s17061350
ISSN
1424-8220
Abstract
Driver assistance systems have become a major safety feature of modern passenger vehicles. The advanced driver assistance system (ADAS) is one of the active safety systems to improve the vehicle control performance and, thus, the safety of the driver and the passengers. To use the ADAS for lane change control, rapid and correct detection of the driver's intention is essential. This study proposes a novel preprocessing algorithm for the ADAS to improve the accuracy in classifying the driver's intention for lane change by augmenting basic measurements from conventional on-board sensors. The information on the vehicle states and the road surface condition is augmented by using an artificial neural network (ANN) models, and the augmented information is fed to a support vector machine (SVM) to detect the driver's intention with high accuracy. The feasibility of the developed algorithm was tested through driving simulator experiments. The results show that the classification accuracy for the driver's intention can be improved by providing an SVM model with sufficient driving information augmented by using ANN models of vehicle dynamics.
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College of Science and Technology > Department of Electro-Mechanical Systems Engineering > 1. Journal Articles
College of Engineering > Department of Mechanical Engineering > 1. Journal Articles

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