Driving style estimation by fusing multiple driving behaviors : a case study of freeway in China
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Date
Authors
Ma, Yulin
Li, Zhixiong
Li, Yicheng
Li, Honghai
Malekian, Reza
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
Traffic accident is one of the most serious issues in traffic problems. In China, more than 50 thousand people die in each year from traffic accidents. To alleviate the incidence of traffic accidents, this paper proposes a driving style estimation method by fusing multiple driving behaviors for Chinese drivers. Firstly, we invite Chinese volunteers to operate a driving simulator. Massive driving data are collected by the simulator. Then, a driving dataset is set up by the collected data. Furthermore, we adopt the collected driving data to represent behaviors by using SVM. Last but not least, a novel classification method is proposed to estimate driving styles, which is called multiple decision tree. The method can fuse multiple behaviors and explore the relationship between driving styles and behaviors. As a result, 20 volunteers and a freeway in China is selected for case study. After test, the proposed method has a 95% accuracy for style estimation. However, about 25% volunteers have a Risk style and these volunteers should change their driving habits. It also reveals the high incidence of accidents in China. Hence, the proposed method can alert the driver with bad styles and is helpful to ease traffic accidents.
Description
Keywords
Driving behavior, Driving style estimation, Multiple decision tree, Support vector machine (SVM), Traffic accident, Accidents, Behavioral research, Decision trees, Classification methods, Driving simulator, Driving styles, Estimation methods, High incidence, Traffic problems, Highway accidents
Sustainable Development Goals
Citation
Ma, Y., Li, Z., Li, Y. et al. Driving style estimation by fusing multiple driving behaviors: a case study of freeway in China. Cluster Computing (2018) 22, 8259–8269 (2019). https://doi.org/10.1007/s10586-018-1739-5.