A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data

Aggressive driving, amongst inappropriate driving behaviors, is largely responsible for leading to traffic accidents, which threatens both the safety and property of human beings. With the objective to reduce traffic accidents and improve road safety, effective and reliable aggressive driving recogn...

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Main Authors: Yongfeng Ma, Ziyu Zhang, Shuyan Chen, Yanan Yu, Kun Tang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8590215/
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spelling doaj-c19a9fe076d642bb8be1c1307204068f2021-03-29T22:55:42ZengIEEEIEEE Access2169-35362019-01-0178028803810.1109/ACCESS.2018.28897518590215A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion DataYongfeng Ma0Ziyu Zhang1Shuyan Chen2Yanan Yu3Kun Tang4https://orcid.org/0000-0001-9976-9845Jiangsu Key Laboratory of Urban ITS, Southeast University, Nanjing, ChinaJiangsu Key Laboratory of Urban ITS, Southeast University, Nanjing, ChinaJiangsu Key Laboratory of Urban ITS, Southeast University, Nanjing, ChinaJiangsu Key Laboratory of Urban ITS, Southeast University, Nanjing, ChinaJiangsu Key Laboratory of Urban ITS, Southeast University, Nanjing, ChinaAggressive driving, amongst inappropriate driving behaviors, is largely responsible for leading to traffic accidents, which threatens both the safety and property of human beings. With the objective to reduce traffic accidents and improve road safety, effective and reliable aggressive driving recognition methods, which enables the development of driving behavior analysis and early warning systems, are urgently needed. Most recently, the research focus of aggressive recognition has shifted to the use of vehicle motion data, which has emerged as a new tool for traffic phenomenon explanation. As aggressive driving corresponds to sudden variations in data, they can be recognized based on the recorded vehicle motion data. In this paper, several kinds of anomaly recognition algorithms are studied and compared, using the motion data collected by the accelerometer and gyroscope of a smartphone mounted on the vehicle. Gaussian mixture model (GMM), partial least squares regression (PLSR), wavelet transformation, and support vector regression (SVR) are considered as the representative algorithms of statistical regression, time series analysis, and machine learning, respectively. These algorithms are evaluated by the three widely used validation metrics, including F<sub>1</sub>-score, precision, and recall. The empirical results show that GMM, PLSR, and SVR are promising methods for aggressive driving recognition. GMM and SVR outperform PLSR when only single-source dataset is used. The improvement of F<sub>1</sub>-score is almost 0.1. PLSR performs the best when multi-source datasets are used, and the F<sub>1</sub>-score is 0.77. GMM and SVR are more robust to hyperparameter. In addition, incorporating multi-source datasets helps improve the accuracy of aggressive driving behavior recognition.https://ieeexplore.ieee.org/document/8590215/Aggressive driving recognitionGaussian mixture modelpartial least squares regressionwavelet transformationsupport vector regressionvehicle motion data
collection DOAJ
language English
format Article
sources DOAJ
author Yongfeng Ma
Ziyu Zhang
Shuyan Chen
Yanan Yu
Kun Tang
spellingShingle Yongfeng Ma
Ziyu Zhang
Shuyan Chen
Yanan Yu
Kun Tang
A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
IEEE Access
Aggressive driving recognition
Gaussian mixture model
partial least squares regression
wavelet transformation
support vector regression
vehicle motion data
author_facet Yongfeng Ma
Ziyu Zhang
Shuyan Chen
Yanan Yu
Kun Tang
author_sort Yongfeng Ma
title A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
title_short A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
title_full A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
title_fullStr A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
title_full_unstemmed A Comparative Study of Aggressive Driving Behavior Recognition Algorithms Based on Vehicle Motion Data
title_sort comparative study of aggressive driving behavior recognition algorithms based on vehicle motion data
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Aggressive driving, amongst inappropriate driving behaviors, is largely responsible for leading to traffic accidents, which threatens both the safety and property of human beings. With the objective to reduce traffic accidents and improve road safety, effective and reliable aggressive driving recognition methods, which enables the development of driving behavior analysis and early warning systems, are urgently needed. Most recently, the research focus of aggressive recognition has shifted to the use of vehicle motion data, which has emerged as a new tool for traffic phenomenon explanation. As aggressive driving corresponds to sudden variations in data, they can be recognized based on the recorded vehicle motion data. In this paper, several kinds of anomaly recognition algorithms are studied and compared, using the motion data collected by the accelerometer and gyroscope of a smartphone mounted on the vehicle. Gaussian mixture model (GMM), partial least squares regression (PLSR), wavelet transformation, and support vector regression (SVR) are considered as the representative algorithms of statistical regression, time series analysis, and machine learning, respectively. These algorithms are evaluated by the three widely used validation metrics, including F<sub>1</sub>-score, precision, and recall. The empirical results show that GMM, PLSR, and SVR are promising methods for aggressive driving recognition. GMM and SVR outperform PLSR when only single-source dataset is used. The improvement of F<sub>1</sub>-score is almost 0.1. PLSR performs the best when multi-source datasets are used, and the F<sub>1</sub>-score is 0.77. GMM and SVR are more robust to hyperparameter. In addition, incorporating multi-source datasets helps improve the accuracy of aggressive driving behavior recognition.
topic Aggressive driving recognition
Gaussian mixture model
partial least squares regression
wavelet transformation
support vector regression
vehicle motion data
url https://ieeexplore.ieee.org/document/8590215/
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