Machine learning methods for driver behaviour classification

Raymond Ghandour, A. Potams, I. Boulkaibet, B. Neji, Z. A. Barakeh, A. Karar
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引用次数: 4

Abstract

Driver behaviour detection and evaluation is becoming an essential task for vehicle manufacturers. Driver distraction is the major cause of road accidents and infrastructure deformation. Furthermore, secondary roads accidents are mainly affected, since external distraction and pedestrian presence are higher than highways. In this paper, we propose a comparison of three machine learning classification methods to identify the driver's behaviour on secondary roads. The classification and comparison are based on the evaluation of real data.
驾驶员行为分类的机器学习方法
驾驶员行为检测与评估正成为汽车制造商的一项重要任务。驾驶员注意力分散是造成道路交通事故和基础设施变形的主要原因。此外,由于外部干扰和行人存在率高于高速公路,二级道路事故主要受到影响。在本文中,我们提出了三种机器学习分类方法的比较,以识别驾驶员在次要道路上的行为。分类和比较是基于对真实数据的评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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