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Detection of driver engagement in secondary tasks from observed naturalistic driving behavior

机译:从观察到的自然驾驶行为中检测驾驶员从事次要任务

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Distracted driving has long been acknowledged as one of the leading causes of death or injury in roadway crashes. The focus of past research has been mainly on the impact of different causes of distraction on driving behavior. However, only a few studies attempted to address how some driving behavior attributes could be linked to the cause of distraction. In essence, this study takes advantage of the rich SHRP 2 Naturalistic Driving Study (NDS) database to develop a model for detecting the likelihood of a driver's involvement in secondary tasks from distinctive attributes of driving behavior. Five performance attributes, namely speed, longitudinal acceleration, lateral acceleration, yaw rate, and throttle position were used to describe the driving behavior. A model was developed for each of three selected secondary tasks: calling, texting, and passenger interaction. The models were developed using a supervised feed-forward Artificial Neural Network (ANN) architecture to account for the effect of inherent nonlinearity in the relationships between driving behavior and secondary tasks. The results show that the developed ANN models were able to detect the drivers' involvement in calling, texting, and passenger interaction with an overall accuracy of 99.5%, 98.1%, and 99.8%, respectively. These results show that the selected driving performance attributes were effective in detecting the associated secondary tasks with driving behavior. The results are very promising and the developed models could potentially be applied in crash investigations to resolve legal disputes in traffic accidents.
机译:长期以来,分散驾驶一直被认为是造成道路交通事故死亡或伤害的主要原因之一。过去的研究重点主要放在分心的各种原因对驾驶行为的影响上。但是,只有少数研究试图解决某些驾驶行为属性如何与注意力分散的原因相关联的问题。从本质上讲,这项研究利用了丰富的SHRP 2自然驾驶研究(NDS)数据库来开发一种模型,该模型可以根据驾驶行为的独特属性来检测驾驶员参与次要任务的可能性。五个性能属性,即速度,纵向加速度,横向加速度,偏航率和油门位置被用来描述驾驶行为。针对三个选定的次要任务分别开发了一个模型:呼叫,发短信和乘客互动。这些模型是使用监督前馈人工神经网络(ANN)架构开发的,以解决驾驶行为与次要任务之间的关系中固有的非线性影响。结果表明,开发的ANN模型能够检测驾驶员参与呼叫,发短信和乘客互动的过程,其总体准确率分别为99.5%,98.1%和99.8%。这些结果表明,所选的驾驶性能属性可以有效地检测与驾驶行为相关的次要任务。结果非常有希望,开发的模型可以潜在地应用于碰撞调查中,以解决交通事故中的法律纠纷。

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