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Drivers Performance Evaluation using Physiological Measurement in a Driving Simulator

机译:在驾驶模拟器中使用生理测量进行驾驶员性能评估

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Monitoring the drivers behaviour and detecting their awareness are of vital importance for road safety. Drivers distraction and low awareness are already known to be the main reason for accidents in the world. Distraction-related crashes have greatly increased in recent years due to the proliferation of communication, entertainment, and malfunctioning of driver assistance systems. Accordingly, there is a need for advanced systems to monitor the drivers behaviour and generate a warning if a degradation in a drivers performance is detected. The purpose of this study is to analyse the vehicle and drivers data to detect the onset of distraction. Physiological measurements, such as palm electrodermal activity, heart rate, breathing rate, and perinasal perspiration are analysed and applied for the development of the monitoring system. The dataset used in this research has these measurements for 68 healthy participants (35 male, 33 female/17 elderly, 51 young). These participants completed two driving sessions in a driving simulator, including the normal and loaded drive. In the loaded scenario, drivers were texting back words. The lane deviation of vehicle was recorded as the response variable. Different classification algorithms such as generalised linear, support vector model, K-nearest neighbour and random forest machines are implemented to classify the driver's performance based on input features. Prediction results indicate that random forest performs the best by achieving an area under the curve (AUC) of over 91%. It is also found that biographic features are not informative enough to analyse drivers performance while perinasal perspiration carries the most information.
机译:监视驾驶员的行为并检测其意识对于道路安全至关重要。众所周知,驾驶员的注意力分散和意识不足是造成世界事故的主要原因。近年来,由于通讯,娱乐和驾驶员辅助系统故障的泛滥,与分心相关的交通事故已大大增加。因此,需要先进的系统来监视驾驶员的行为并在检测到驾驶员性能下降的情况下产生警告。这项研究的目的是分析车辆和驾驶员数据,以检测干扰的发生。分析生理测量值,例如手掌皮肤电活动,心率,呼吸率和鼻周汗液,并将其用于监测系统的开发。本研究中使用的数据集对68位健康参与者(35位男性,33位女性/ 17位老年人,51位年轻)进行了测量。这些参与者在驾驶模拟器中完成了两个驾驶会话,包括正常驾驶和负载驾驶。在加载的场景中,驱动程序正在发短信。车辆的车道偏离被记录为响应变量。实现了不同的分类算法,例如广义线性,支持向量模型,K近邻和随机森林机,以基于输入特征对驾驶员的性能进行分类。预测结果表明,通过使曲线下面积(AUC)超过91%,随机森林表现最佳。还发现,传记特征不足以分析驾驶员的表现,而鼻周汗液携带的信息最多。

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