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Driving Risk Evaluation Based on Multidimensional Data

机译:基于多维数据的驾驶风险评估

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This paper proposes a crash-involvement risk evaluation method using multidimensional data including drivers' license and violation records, vehicle registration information, camera data at intersections, and traffic crash data. A bagging-support vector machine (Bagging-SVM) model is trained using both static and behavioral features to evaluate a driver's crash-involvement risk. A feature selection method based on the F-score is performed before the risk evaluation. The results show that this extraction method can improve the stability of the evaluation, and provides the importance of each feature. A case study on truck drivers from a medium-size city in northern China is presented. It is found that driving behavior such as violations, trips at midnight, and headways are significantly related to crash-involvement.
机译:本文提出了一种涉及多维数据的碰撞事故风险评估方法,包括驾驶执照和违章记录,车辆登记信息,交叉路口的摄像头数据以及交通事故数据。使用静态和行为功能对行李支持向量机(Bagging-SVM)模型进行训练,以评估驾驶员的撞车风险。在风险评估之前执行基于F分数的特征选择方法。结果表明,该提取方法可以提高评估的稳定性,并提供每个特征的重要性。以中国北方一个中等城市的卡车司机为例。研究发现,违反行为,午夜旅行和上车等驾驶行为与碰撞事故密切相关。

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