Abstract

Aggressive driving emotions is indeed one of the major causes for traffic accidents throughout the world. Real-time classification in time series data of abnormal and normal driving is a keystone to avoiding road accidents. Existing work on driving behaviors in time series data have some limitations and discomforts for the users that need to be addressed. We proposed a multimodal based method to remotely detect driver aggressiveness in order to deal these issues. The proposed method is based on change in gaze and facial emotions of drivers while driving using near-infrared (NIR) camera sensors and an illuminator installed in vehicle. Driver’s aggressive and normal time series data are collected while playing car racing and truck driving computer games, respectively, while using driving game simulator. Dlib program is used to obtain driver’s image data to extract face, left and right eye images for finding change in gaze based on convolutional neural network (CNN). Similarly, facial emotions that are based on CNN are also obtained through lips, left and right eye images extracted from Dlib program. Finally, the score level fusion is applied to scores that were obtained from change in gaze and facial emotions to classify aggressive and normal driving. The proposed method accuracy is measured through experiments while using a self-constructed large-scale testing database that shows the classification accuracy of the driver’s change in gaze and facial emotions for aggressive and normal driving is high, and the performance is superior to that of previous methods.

Highlights

  • Research in detecting the aggressive driving situation of a driver has been increased due to the large number of casualties that is caused by rush driving and frequent damage to the surroundings, such as pedestrians, vehicles, and property

  • We propose a single near-infrared (NIR) camera sensor-based system for classification of driver’s aggressive and normal driving behavior for car environments using a convolutional neural network (CNN) to address the above-mentioned challenges and for overcoming the limitations of previous systems

  • The competition mode of Need for Speed (Deluxe Edition) [57] was used and normal driving, and the autonomous mode of Euro Truck Simulator 2 [58] was selected, as they were considered to be most appropriate for this situation

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Summary

Introduction

Research in detecting the aggressive driving situation of a driver has been increased due to the large number of casualties that is caused by rush driving and frequent damage to the surroundings, such as pedestrians, vehicles, and property. Aggressive driving, constitutes huge portion of road traffic accident reasons. It has been highlighted by report of the American Automobile. Association Foundation for Traffic safety, published in 2009, that the aggressive behavior of driver causes 56% of traffic accidents [2]. People, company, and government lose billions of dollars due to road accidents. For this reason, aggressive driving behavior must be strongly discouraged that will result in reduction of the number of traffic accidents

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