基于小波和统计分析的驾驶员低警觉性诊断

A. Santana Diaz, B. Jammes, D. Estève, M. Gonzalez Mendoza
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引用次数: 12

摘要

本文提出了一种基于小波分析实测信号并计算其变长时间窗内统计特性的驾驶员警觉性诊断系统。这样的系统应该表征一个未指定的警觉司机的驾驶模式,以便检测由于警觉下降而导致的驾驶方式的改变。我们假设能够表征驾驶模式的信号是:车辆在车道内的位置,也称为横向位置,方向盘角度和车辆速度。这项研究是在真实交通条件下收集的数据进行的。为了确定警惕性驾驶员的驾驶特征,我们选择了几个脑电图分析和驾驶员自我评价都表明驾驶员具有警惕性的驾驶序列。然后,我们通过将我们的系统产生的诊断结果与基于脑电图分析和驾驶员自我评估的驾驶员生理状态进行比较,来限定我们系统的相关性,特别是用于诊断的变量的选择。
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Driver hypovigilance diagnosis using wavelets and statistical analysis
This paper presents a driver vigilance diagnosis system based on the analysis of measured signals with wavelets and the computation of their statistical characteristics inside variable length time-windows. Such a system should characterize the driving mode of an unspecified vigilant driver in order to detect a modification of the way of driving due to the fall of vigilance. The signals that we assume to be able to characterize the driving mode are: the position of the vehicle inside the traffic lane, also called lateral position, the steering wheel angle and vehicle speed. This study has been performed with data collected in real traffic conditions. To determine the driving characteristics of vigilant driver we have selected few driving sequences where both the EEG analysis and the driver self-evaluation indicate the driver was vigilant. Then, we qualify the relevance of our system, particularly the choice of the variable used for the diagnostic, by comparing the diagnostic produces by our system with the physiological state of the driver based on EEG analysis and the driver self-evaluation.
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