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The Induction and Detection Method of Angry Driving: Evidences from EEG and Physiological Signals

机译:愤怒驾驶的归纳和检测方法:来自脑电图和生理信号的证据

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Introduction. Angry driving has been a significant road safety issue worldwide. This study focuses on the problem of inducing and detecting driving anger based on the simulation and on-road experiments. Methods. First, three typical scenarios (including waiting for the red light frequently, traffic congestion, and the surrounding vehicle interference) which could cause driving anger were developed and applied in a driving simulator experimental study. The self-reported, biosignals, and brain signals of driving anger data were collected from the driving anger induction experiment. Second, in order to examine the difference of driving anger between simulation driving and real-life driving, 22 groups of on-road experiments were conducted. The typical scenes and self-reported data were recorded to distinguish normal driving from angry driving. Finally, a Hidden Naïve Bayes classifier was employed to detect angry driving during the on-road driving according to the four features (namely, BVP, SC, δ%, and β%) from driver’s biosignals and brain signals. Results. The evaluation of emotional differentiation degrees and emotional intensity indicates that the developed scenarios based on virtual reality were useful and effective in inducing driving anger. Meanwhile, the proposed angry driving detection approach achieves an accuracy of 85.0%. Conclusions and Applications. Due to possible crash and injury from the on-road experiments, the proposed approach of driving anger induction using a driving simulator is effective in exploring the causal relationship between angry driving, unsafe driving behavior, and traffic accident. In addition, angry driving detection approach can provide theoretical foundation for the development of driving anger warning products.
机译:介绍。愤怒的驾驶已成为世界范围内重要的道路安全问题。本研究基于仿真和道路实验,重点研究了诱发和检测驾驶员怒气的问题。方法。首先,开发了三种可能引起驾驶愤怒的典型场景(包括频繁等待红灯,交通拥堵和周围车辆干扰)并将其应用于驾驶模拟器实验研究中。从驾驶愤怒诱导实验中收集了驾驶愤怒数据的自我报告,生物信号和大脑信号。其次,为了研究模拟驾驶与现实驾驶之间的驾驶愤怒差异,进行了22组道路实验。记录典型场景和自我报告的数据,以区分正常驾驶和愤怒驾驶。最后,根据驾驶员的生物信号和大脑信号的四个特征(即BVP,SC,δ%和β%),使用隐藏的朴素贝叶斯分类器来检测公路行驶中的愤怒驾驶。结果。情绪分化程度和情绪强度的评估表明,基于虚拟现实的已开发情景在诱发驾驶愤怒方面是有用且有效的。同时,提出的愤怒驾驶检测方法达到了85.0%的准确率。结论与应用。由于道路实验可能会造成碰撞和伤害,因此提出的使用驾驶模拟器诱发愤怒的方法可有效地探索愤怒驾驶,不安全驾驶行为和交通事故之间的因果关系。另外,生气驾驶检测方法可以为开发驾驶员生气警告产品提供理论基础。

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