基于生理特征的自适应驾驶安全支持系统认知分心识别

H. Kawanaka, M. Miyaji, Md. Shoaib Bhuiyan, K. Oguri
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引用次数: 18

摘要

通过问卷调查,我们发现交通事故与驾驶员在事故发生前的精神和身体状态密切相关。分心是导致交通事故的主要人为因素之一。我们通过在驾驶模拟器上施加认知负荷,如在驾驶时做算术和交谈,来重现驾驶员的认知分心。本研究使用被试的凝视方向、瞳孔直径、头部方向等视觉特征,以及心电图的心率来检测认知分心。我们使用AdaBoost提高了从早期研究中获得的检测精度。本文还提出了一种基于纠错输出编码的多类别识别方法,该方法可以识别认知负荷的程度。最后,通过一系列实验验证了多类识别的有效性。所有这些都是为了开发驾驶员监控系统的组成技术,以期创造自适应驾驶安全支持系统,以减少交通事故的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Cognitive Distraction Using Physiological Features for Adaptive Driving Safety Supporting System
It was identified that traffic accidents relate closely to the driver’s mental and physical states immediately before the accident by our questionnaire survey. Distraction is one of the key human factors involved in traffic accidents. We reproduced driver’s cognitive distraction on a driving simulator by means of imposing cognitive loads such as doing arithmetic and having conversation while driving. Visual features such as test subjects’ gaze direction, pupil diameter, and head orientation, together with heart rate from ECG, were used in this study to detect the cognitive distraction. We improved detection accuracy obtained from earlier studies by using the AdaBoost. This paper also suggests a multiclass identification using Error-Correcting Output Coding, which can identify the degree of cognitive load. Finally, we verified the effectiveness of the multiclass identification by conducting a series of experiments. All these aimed at developing a constituent technology of a driver monitoring system that is expected to create adaptive driving safety supporting system to lower the number of traffic accidents.
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