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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Detection of Driver Cognitive Distraction: A Comparison Study of Stop-Controlled Intersection and Speed-Limited Highway
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Detection of Driver Cognitive Distraction: A Comparison Study of Stop-Controlled Intersection and Speed-Limited Highway

机译:驾驶员认知分心的检测:停车控制交叉口与限速公路的比较研究

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摘要

Driver distraction has been identified as one major cause of unsafe driving. The existing studies on cognitive distraction detection mainly focused on high-speed driving situations, but less on low-speed traffic in urban driving. This paper presents a method for the detection of driver cognitive distraction at stop-controlled intersections and compares its feature subsets and classification accuracy with that on a speed-limited highway. In the simulator study, 27 subjects were recruited to participate. Driver cognitive distraction is induced by the clock task that taxes visuospatial working memory. The support vector machine (SVM) recursive feature elimination algorithm is used to extract an optimal feature subset out of features constructed from driving performance and eye movement. After feature extraction, the SVM classifier is trained and cross-validated within subjects. On average, the classifier based on the fusion of driving performance and eye movement yields the best correct rate and F-measure ( for stop-controlled intersections and for a speed-limited highway) among four types of the SVM model based on different candidate features. The comparisons of extracted optimal feature subsets and the SVM performance between two typical driving scenarios are presented.
机译:驾驶员分心已被确定为导致不安全驾驶的主要原因之一。现有的关于认知分心检测的研究主要集中在高速驾驶情况下,而很少涉及城市驾驶中的低速交通情况。本文提出了一种在停车控制的路口处检测驾驶员认知干扰的方法,并将其特征子集和分类精度与限速高速公路上的进行了比较。在模拟器研究中,招募了27名受试者参加。驾驶员的注意力分散是由对视觉空间工作记忆加重的时钟任务引起的。支持向量机(SVM)递归特征消除算法用于从由驾驶性能和眼睛运动构成的特征中提取最佳特征子集。特征提取后,将在主题内对SVM分类器进行训练和交叉验证。平均而言,基于驾驶性能和眼球运动的融合的分类器会根据不同的候选特征,在四种类型的SVM模型中产生最佳的正确率和F量度(适用于停车控制交叉口和限速高速公路) 。给出了两种典型驾驶场景下提取的最优特征子集和SVM性能的比较。

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