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Driving Behavior Safety Levels: Classification and Evaluation

机译:驾驶行为安全等级:分类和评估

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摘要

Driving simulators and naturalistic driving studies are often used to understand driving behavior characteristics. It is essential to evaluate the traffic safety of driving behavior in real time, which is helpful to trigger interventions of Advanced Driver Assistance Systems (ADAS) to ensure the driving safety. Therefore, this paper aims to propose a framework of driving behavior safety level classification and evaluation in real time, which was validated by a case study based on a driving simulation experiment. The proposed methodology focuses on finding the optimal number of safety "levels" or "zones" for driving behavior, classifying the safety levels with the help of different clustering techniques, and evaluating the driving safety levels based on developed classification models in real-time. Three clustering techniques were applied, including k-means clustering, hierarchical clustering and model-based clustering. The optimal number of clusters was found to be four using k-means clustering, and the clusters of safety levels will be labelled as "normal" driving, "low risk" driving, "middle risk" driving and "high risk" driving. A Support Vector Machine (SVM) and a decision tree were thereafter developed as the classification model. The accuracy of the combination of model-based clusters and SVM models proved to be the best with four clusters, yet no significant difference to other models was found.
机译:驾驶模拟器和自然驾驶研究通常用于了解驾驶行为特征。实时评估驾驶行为的交通安全至关重要,这有助于触发高级驾驶辅助系统(ADAS)的干预,以确保驾驶安全。因此,本文旨在提出一个实时驾驶行为安全等级分类和评估框架,并通过基于驾驶模拟实验的案例研究进行了验证。所提出的方法侧重于寻找驾驶行为的最佳安全“级别”或“区域”,借助不同的聚类技术对安全级别进行分类,并基于开发的分类模型实时评估驾驶安全级别。应用了三种聚类技术,包括k-均值聚类、层次聚类和基于模型的聚类。使用k-means聚类发现,最佳聚类数为4,安全级别的聚类将被标记为“正常”驾驶、“低风险”驾驶、“中等风险”驾驶和“高风险”驾驶。随后,开发了支持向量机(SVM)和决策树作为分类模型。基于模型的聚类和支持向量机模型的组合在四个聚类中的精度最好,但与其他模型没有显著差异。

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