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New Driver Workload Prediction Using Clustering-Aided Approaches

机译:使用聚类辅助方法的新驾驶员工作量预测

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摘要

Awareness of driver workload (DW) plays a paramount role in enhancing driving safety and convenience for intelligent vehicles. The DW prediction systems proposed so far learn either from individual driver’s data (termed personalized system) or existing drivers’ data indiscriminately (termed average system). As a result, they either do not work or lead to a limited performance for new drivers without labeled data. To this end, we develop clustering-aided approaches exploiting group characteristics of the existing drivers’ data. Two clustering aided predictors are proposed. The first is clustering-aided regression (CAR) model, where the regression model for the cluster with the highest likelihood is adopted. The second is clustering-aided multiple model regression model, where the concept of multiple models is further augmented to CAR. A recent dataset from real-world driving experiments is adopted to validate the algorithms. Comparative results against the conventional average system demonstrate that by incorporating clustering information, both the proposed approaches significantly improve workload prediction performance.
机译:驾驶员工作量(DW)的意识在增强智能车辆的驾驶安全性和便利性方面发挥着至关重要的作用。迄今为止,建议的DW预测系统要么从单个驾驶员的数据(称为个性化系统)中学习,要么从现有驾驶员的数据中(不分青红皂白地)学习。结果,它们要么不起作用,要么导致没有标签数据的新驱动程序的性能受到限制。为此,我们开发了群集辅助方法,以利用现有驾驶员数据的组特征。提出了两种聚类预测器。第一种是聚类辅助回归(CAR)模型,其中采用了可能性最高的聚类的回归模型。第二个是聚类辅助的多模型回归模型,其中多个模型的概念进一步扩展到了CAR。采用来自现实驾驶实验的最新数据集来验证算法。与常规平均系统的比较结果表明,通过合并聚类信息,两种建议的方法都可以显着提高工作量预测性能。

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