Drowsiness monitoring based on driver and driving data fusion

I. G. Daza, N. Hernández, L. Bergasa, I. Parra, J. Yebes, M. Gavilán, R. Quintero, D. F. Llorca, M. Sotelo
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引用次数: 60

Abstract

This paper presents a non-intrusive approach for monitoring driver drowsiness, based on driver and driving data fusion. The Percentage of Eye Closure (PERCLOS) is used to estimate the driver's state. The PERCLOS is computed on real time using a stereo vision-based system. The driving information used is the lateral position, the steering wheel angle and the heading error provided by the CAN bus. These three signals have been studied in the time and frequency domain. A multilayer perceptron neural network has been trained to fetch an optimal performance score. This system was installed in a naturalistic driving simulator. For evaluation purposes, several experiments were designed by psychologists and carried out with professional drivers. As ground truth, subjective experts' manual annotation of the driver video sequences and driving signals was used. A detection rate of 70% using individual indicators was raised up to 94% with the combination of indicators. An explanation about these results and some conclusion are presented.
基于驾驶员与驾驶数据融合的困倦监测
本文提出了一种基于驾驶员和驾驶数据融合的非侵入式驾驶员困倦监测方法。眼闭百分率(PERCLOS)用于估计驾驶员的状态。PERCLOS使用基于立体视觉的系统进行实时计算。所使用的驾驶信息是由CAN总线提供的横向位置、方向盘角度和航向误差。对这三种信号进行了时域和频域研究。为了获得最优的性能分数,我们训练了多层感知器神经网络。该系统安装在一个自然驾驶模拟器中。为了评估目的,心理学家设计了几个实验,并与专业司机一起进行。采用主观专家对驾驶员视频序列和驾驶信号的手工标注作为基础事实。单项指标检出率为70%,综合指标检出率为94%。对这些结果进行了解释,并给出了一些结论。
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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