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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Visual-Manual Distraction Detection Using Driving Performance Indicators With Naturalistic Driving Data
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Visual-Manual Distraction Detection Using Driving Performance Indicators With Naturalistic Driving Data

机译:使用具有自然驾驶数据的驾驶性能指标进行视觉手动分心检测

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摘要

This paper investigates the problem of driver distraction detection using driving performance indicators from onboard kinematic measurements. First, naturalistic driving data from the integrated vehicle-based safety system program are processed, and cabin camera data are manually inspected to determine the driver's state (i.e., distracted or attentive). Second, existing driving performance metrics, such as steering entropy, steering wheel reversal rate, and lane offset variance, are reviewed against the processed naturalistic driving data. Furthermore, a nonlinear autoregressive exogenous (NARX) driving model is developed to predict vehicle speed based on the range (distance headway), range rate, and speed history. For each driver, the NARX model is then trained on the attentive driving data. We show that the prediction error is correlated with driver distraction. Finally, two features, steering entropy and mean absolute speed prediction error from the NARX model are selected, and a support vector machine is trained to detect driving distraction. Prediction performances are reported.
机译:本文研究了利用运动学测量中的驾驶性能指标来检测驾驶员注意力分散的问题。首先,处理来自基于车辆的集成安全系统程序的自然驾驶数据,并手动检查机舱摄像机数据以确定驾驶员的状态(即分心或专心)。其次,对照已处理的自然驾驶数据,检查现有的驾驶性能指标,例如转向熵,方向盘反转率和车道偏移差异。此外,开发了非线性自回归外生(NARX)驾驶模型,以基于距离(距离车距),距离率和速度历史记录来预测车速。然后,针对每个驾驶员,针对专注的驾驶数据训练NARX模型。我们证明了预测误差与驾驶员注意力分散有关。最后,选择两个特征,即转向熵和来自NARX模型的平均绝对速度预测误差,并训练了一个支持向量机来检测驾驶干扰。报告了预测性能。

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