Using Naturalistic Vehicle-Based Data to Predict Distraction and Environmental Demand

IF 0.2 Q4 COMPUTER SCIENCE, CYBERNETICS
Dina Kanaan, Suzan Ayas, Birsen Donmez, Martina Risteska, Joyita Chakraborty
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引用次数: 9

Abstract

This research utilized vehicle-based measures from a naturalistic driving dataset to detect distraction as indicated by long off-path glances (≥ 2 s) and whether the driver was engaged in a secondary (non-driving) task or not, as well as to estimate motor control difficulty associated with the driving environment (i.e. curvature and poor surface conditions). Advanced driver assistance systems can exploit such driver behavior models to better support the driver and improve safety. Given the temporal nature of vehicle-based measures, Hidden Markov Models (HMMs) were utilized; GPS speed and steering wheel position were used to classify the existence of off-path glances (yes vs. no) and secondary task engagement (yes vs. no); lateral (x-axis) and longitudinal (y-axis) acceleration were used to classify motor control difficulty (lower vs. higher). Best classification accuracies were achieved for identifying cases of long off-path glances and secondary task engagement with both accuracies of 77%.
使用基于车辆的自然数据来预测分心和环境需求
本研究利用来自自然驾驶数据集的基于车辆的测量来检测分心,如长时间偏离路径的目光(≥2秒),以及驾驶员是否从事次要(非驾驶)任务,以及估计与驾驶环境(即曲率和恶劣的表面条件)相关的电机控制难度。先进的驾驶员辅助系统可以利用这些驾驶员行为模型来更好地支持驾驶员并提高安全性。考虑到基于车辆的测量的时间性质,使用隐马尔可夫模型(hmm);使用GPS速度和方向盘位置来区分是否存在偏离路径的目光(是或否)和次要任务参与(是或否);横向(x轴)和纵向(y轴)加速度用于区分运动控制难度(低与高)。在识别长偏离路径的目光和次要任务参与的情况下,达到了最佳的分类精度,两者的准确率均为77%。
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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来源期刊
CiteScore
4.70
自引率
0.00%
发文量
5
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