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Optimal Threshold Determination for Discriminating Driving Anger Intensity Based on EEG Wavelet Features and ROC Curve Analysis

机译:基于EEG小波特征和ROC曲线分析的区分驾驶员愤怒强度的最佳阈值确定

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Driving anger, called “road rage”, has become increasingly common nowadays, affecting road safety. A few researches focused on how to identify driving anger, however, there is still a gap in driving anger grading, especially in real traffic environment, which is beneficial to take corresponding intervening measures according to different anger intensity. This study proposes a method for discriminating driving anger states with different intensity based on Electroencephalogram (EEG) spectral features. First, thirty drivers were recruited to conduct on-road experiments on a busy route in Wuhan, China where anger could be inducted by various road events, e.g., vehicles weaving/cutting in line, jaywalking/cyclist crossing, traffic congestion and waiting red light if they want to complete the experiments ahead of basic time for extra paid. Subsequently, significance analysis was used to select relative energy spectrum of β band (β%) and relative energy spectrum of θ band (θ%) for discriminating the different driving anger states. Finally, according to receiver operating characteristic (ROC) curve analysis, the optimal thresholds (best cut-off points) of β% and θ% for identifying none anger state (i.e., neutral) were determined to be 0.2183 ≤ θ% < 1, 0 < β% < 0.2586; low anger state is 0.1539 ≤ θ% < 0.2183, 0.2586 ≤ β% < 0.3269; moderate anger state is 0.1216 ≤ θ% < 0.1539, 0.3269 ≤ β% < 0.3674; high anger state is 0 < θ% < 0.1216, 0.3674 ≤ β% < 1. Moreover, the discrimination performances of verification indicate that, the overall accuracy ( Acc ) of the optimal thresholds of β% for discriminating the four driving anger states is 80.21%, while 75.20% for that of θ%. The results can provide theoretical foundation for developing driving anger detection or warning devices based on the relevant optimal thresholds.
机译:如今,被称为“道路愤怒”的行车怒气已越来越普遍,影响了道路安全。少数研究集中在如何识别愤怒情绪上,然而,尤其是在现实的交通环境中,愤怒情绪的分级仍存在差距,这有利于根据不同的愤怒强度采取相应的干预措施。这项研究提出了一种基于脑电图(EEG)光谱特征来区分不同强度的驾驶愤怒状态的方法。首先,招募了三十名驾驶员在中国武汉的一条繁忙道路上进行道路实验,在该道路上,各种道路事件都可能引发愤怒,例如车辆织造/剪线,人行横道/骑自行车的人过马路,交通拥堵和等待红灯如果他们想在基本时间之前完成实验以支付额外费用。随后,通过显着性分析选择β谱带的相对能谱(β%)和θ谱带的相对能谱(θ%)来区分不同的驾驶愤怒状态。最后,根据接收器工作特性(ROC)曲线分析,确定无愤怒状态(即中性)的最佳阈值(最佳临界点)β%和θ%确定为0.2183≤θ%<1 0 <β%<0.2586;低愤怒状态为0.1539≤θ%<0.2183,0.2586≤β%<0.3269;中度愤怒状态为0.1216≤θ%<0.1539,0.3269≤β%<0.3674;高怒状态为0 <θ%<0.1216,0.3674≤β%<1。此外,验证的判别性能表明,用于判别四种行驶怒气状态的最佳β%阈值的总体准确度(Acc)为80.21。 %,而θ%为75.20%。该结果可为基于相关的最佳阈值开发驾驶愤怒检测或警告装置提供理论基础。

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