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Driver identification using vehicle acceleration and deceleration events from naturalistic driving of older drivers

机译:使用老驾驶员自然驾驶的车辆加减速事件识别驾驶员

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Driving is a common task that involves skill and individual preferences that can differ between drivers. The unique driving behaviours can be beneficial for differentiating drivers of shared vehicles and identifying differences between older drivers with normal and declining driving abilities. This paper presents a method for identifying individual drivers based on motor vehicle acceleration and deceleration events from their natural driving behaviour. We provide a novel approach to driver identification based on classification using multiple in-vehicle sensor signals collected in naturalistic conditions with anonymized driving locations. The dataset consists of thousands of trips from a selection of 14 stable-health older drivers (70 years and older) from their first year of the Candrive research study. We trained separate multiclass linear discriminant analysis classifiers to recognize unique patterns in their acceleration and deceleration events to predict the identity of the driver out of a group of drivers. For five different drivers, the acceleration and deceleration events were used to distinguish between drivers at 34% and 30% average accuracy, respectively. By taking a majority vote among the events, the accuracy improved to 61%, exceeding by about three times the null model of random guessing. This performance improvement continues when expanding the group from 2 to 14 drivers. The analysis shows potential for identifying drivers by the patterns in their driving maneuvers such as turning and stopping.
机译:驾驶是一项常见的任务,涉及技能和个人偏好,驾驶者之间可能会有所不同。独特的驾驶行为有助于区分共享车辆的驾驶员,并识别具有正常和下降驾驶能力的老年驾驶员之间的差异。本文提出了一种基于驾驶员自然驾驶行为中的加速和减速事件来识别单个驾驶员的方法。我们提供了一种基于分类的新颖驾驶员识别方法,该分类使用在自然条件下使用匿名驾驶位置收集的多个车载传感器信号。该数据集包含从Candrive研究研究第一年起选择的14位健康状况良好的老年驾驶员(70岁及以上)中进行的数千次旅行。我们训练了单独的多类线性判别分析分类器,以识别其加速和减速事件中的独特模式,以预测一组驾驶员中驾驶员的身份。对于五个不同的驱动器,分别使用加速和减速事件以平均准确度分别为34%和30%的方式区分驱动程序。通过在事件中进行多数表决,准确性提高到61%,是随机猜测的空模型的三倍左右。当该组从2个驱动程序扩展到14个驱动程序时,性能会继续提高。该分析表明有潜力通过驾驶操作中的模式(例如转弯和停车)来识别驾驶员。

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