...
首页> 外文期刊>Discrete dynamics in nature and society >Driving Anger States Detection Based on Incremental Association Markov Blanket and Least Square Support Vector Machine
【24h】

Driving Anger States Detection Based on Incremental Association Markov Blanket and Least Square Support Vector Machine

机译:驾驶愤怒状态基于增量协会马尔可夫毯和最小二乘支持向量机的探测

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Driving anger, known as “road rage”, has gradually become a serious traffic psychology issue. Although driving anger identification is solved in some studies, there is still a gap in driving anger grading which is helpful to take different intervening measures for different anger intensity, especially in real trafficenvironment.Themain objectives of this study are: (1) explore a novel driving anger induction method based on various elicitation events, e.g., traffic congestion, vehicles weaving/cutting in line, jaywalking and red light waiting in real traffic environment; (2) apply incremental association Markov blanket (IAMB) algorithm to select typical features related to driving anger states; (3) employ least square support vectormachine (LSSVM) to identify different driving anger states based on the selected features.Thirty private car drivers were enrolled to perform field experiments on a busy route selected in Wuhan, China, where drivers' anger could be induced by the elicitation events within limited time.Meanwhile, three types of data sets including driver physiology, driving behaviors and vehiclemotions, were collected bymultiple sensors.Theresults indicate that 13 selected features including skin conductance, relative energy spectrum of β band of electroencephalogram, standard deviation (SD) of pedaling speed of gas pedal, SD of steering wheel angle rate, vehicle speed, SD of speed, SD of forward acceleration and SD of lateral acceleration have significant impact on driving anger states.The IAMB-LSSVMmodel achieves an accuracy with 82.20% which is 2.03%, 3.15%, 4.34%, 7.84% and 8.36% higher than IAMB using C4.5,NBC, SVM,KNNandBPNN, respectively.Theresults are beneficial to design driving anger detecting or intervening devices in intelligent human-machine systems.
机译:驾驶愤怒,被称为“道路愤怒”,逐渐成为一个严重的交通心理学问题。虽然在一些研究中解决了驾驶愤怒识别,但仍然存在驾驶愤怒分级的差距,这有助于采取不同的愤怒强度,特别是在真正的交通环境中采取不同的干预措施。这项研究的目的是:(1)探索一部小说驾驶愤怒诱导方法基于各种诱导事件,例如交通拥堵,车辆编织/切割线,jaywalking和Red光在实际交通环境中等待; (2)应用增量协会Markov毯(IAMB)算法选择与驾驶愤怒状态相关的典型特征; (3)雇用最小二乘支持Vectormachine(LSSVM)根据所选特征识别不同的驾驶愤怒状态。私人汽车司机注册了在中国武汉选择的繁忙路线上进行现场实验,可以诱导司机的愤怒通过限量时间内的诱导事件。当多种传感器收集了包括驾驶员生理学,驾驶行为和车辆的三种类型的数据集。检查结果表明,13个选定的特征,包括皮肤电导,β带有脑电图的相对能谱,标准偏差(SD)气体踏板的脚蹬速度,方向盘角率的SD,速度,SD的转向加速度的SD和横向加速度的SD对驾驶愤怒状态产生了重大影响。IAMB-LSSVMMODEL实现了82.20的准确性使用C4.5,NBC,SVM,KnnandBPNN分别比IAMB高2.03%,3.15%,4.34%,7.84%和8.36%.Theresults是受益者在智能人机系统中设计驾驶愤怒检测或干预装置的填充。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号