基于脑电和脑电位样本熵的驾驶愤怒判别方法

Ping Wan, Jianghui Wen, Chaozhong Wu
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引用次数: 4

摘要

“路怒症”一直是交通安全和管理部门关注的问题。为了提供对愤怒驾驶行为的有效检测,有必要提供一种区分愤怒驾驶与正常驾驶的方法。在中国武汉招募了30名专业司机进行道路实验。司机被要求在110分钟内完成实验,他们的愤怒是由各种刺激事件引起的,如乱穿马路和穿插/切入其他车辆。采集驾驶员在正常状态和愤怒状态下的脑电图和血容量脉冲信号。统计分析表明,脑电和脑动电位信号的样本熵可以作为识别愤怒驾驶的指标。基于获得的EEG和BVP样本熵,引入受试者工作特征(ROC)曲线分析,确定驾驶愤怒的判别阈值。结果表明,当EEG样本熵在(0.2717,0.6867)之间,BVP样本熵在(0.4816,0.7056)之间时,驾驶员处于过渡时期,即驾驶员在面对刺激事件时容易发怒。当EEG样本熵小于0.5817,BVP样本熵大于0.6037时,驾驶员很可能处于愤怒状态,平均准确率为80.41%。因此,EEG样本熵为0.5817,BVP样本熵为0.6037作为识别驾驶愤怒的阈值是合理的。研究结果可为开发基于EEG和BVP样本熵的驾驶愤怒识别预警装置提供理论基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A discriminating method of driving anger based on sample entropy of EEG and BVP
“Road rage” has been a concern to traffic safety and management authorities. In order to provide an effective detection of angry driving behavior, it is necessary to provide a method for discriminating angry driving from normal. Thirty professional drivers were recruited for conducting on-road experiments in Wuhan, China. The drivers were required to finish the experiment within 110 minutes and their anger was induced by various stimulating events, e.g., jaywalking and weaving/cut-into of other vehicles. The electroencephalography (EEG) and blood volume pulse (BVP) signals of drivers were collected in the normal and angry states from the field experiments. Statistical analysis shows that the sample entropy of EEG and BVP signals was viable to be used as the index for identifying angry driving. Based on the obtained EEG and BVP sample entropy, a receiver operating characteristic (ROC) curve analysis was introduced to determine the discriminating threshold of driving anger. The results indicate that, when the EEG sample entropy is between (0.2717, 0.6867) and the BVP sample entropy is between (0.4816, 0.7056), the driver is in the transitional period, which means that the driver can become angry easily when facing the stimulating events. When the EEG sample entropy is smaller than 0.5817 and the BVP sample entropy is bigger than 0.6037, the driver is likely to be in an angry state, with an average accuracy of 80.41%. Therefore, it appears reasonable to use the EEG sample entropy of 0.5817 and the BVP sample entropy of 0.6037 as the threshold for identify driving anger. It is believed that the study results can provide a theoretical foundation for developing EEG and BVP sample entropy-based driving anger recognition and warning devices.
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