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Towards Intelligent Data Analytics: A Case Study in Driver Cognitive Load Classification

机译:旨在智能数据分析:司机认知负荷分类的案例研究

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摘要

One debatable issue in traffic safety research is that the cognitive load by secondary tasks reduces primary task performance, i.e., driving. In this paper, the study adopted a version of the n-back task as a cognitively loading secondary task on the primary task, i.e., driving; where drivers drove in three different simulated driving scenarios. This paper has taken a multimodal approach to perform ‘intelligent multivariate data analytics’ based on machine learning (ML). Here, the k-nearest neighbour (k-NN), support vector machine (SVM), and random forest (RF) are used for driver cognitive load classification. Moreover, physiological measures have proven to be sophisticated in cognitive load identification, yet it suffers from confounding factors and noise. Therefore, this work uses multi-component signals, i.e., physiological measures and vehicular features to overcome that problem. Both multiclass and binary classifications have been performed to distinguish normal driving from cognitive load tasks. To identify the optimal feature set, two feature selection algorithms, i.e., sequential forward floating selection (SFFS) and random forest have been applied where out of 323 features, a subset of 42 features has been selected as the best feature subset. For the classification, RF has shown better performance with -score of 0.75 and 0.80 than two other algorithms. Moreover, the result shows that using multicomponent features classifiers could classify better than using features from a single source.
机译:交通安全研究中的一个争论问题是通过二次任务的认知负载减少了主要任务性能,即驾驶。在本文中,该研究通过了一个N背部任务的版本,作为主要任务的认知加载二次任务,即驾驶;司机在三种不同的模拟驾驶场景中推动的地方。本文采用了一种基于机器学习(ML)的“智能多变量数据分析”的多模式方法。这里,k最近邻(K-Nn),支持向量机(SVM)和随机林(RF)用于驾驶员认知负载分类。此外,生理措施已被证明在认知载荷识别中复杂,但它遭受了混杂因素和噪音。因此,这项工作使用多分量信号,即生理措施和车辆功能来克服该问题。已经执行了多种子序和二进制分类,以区分从认知负载任务的正常驱动。为了识别最佳特征集,已经应用了两个特征选择算法,即顺序前向浮动选择(SFF)和随机森林,其中42个功能的子集被选择为最佳特征子集。对于分类,RF显示出更好的性能,而且为0.75和0.80比另外两种算法为更好的性能。此外,结果表明,使用多组分特征分类器可以比使用单个源的功能更好地分类。

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