脑电对汽车驾驶员认知分心检测的时间影响

Eike Schneiders, M. B. Kristensen, M. K. Svangren, M. Skov
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引用次数: 4

摘要

脑电图(EEG)有可能测量一个人的认知状态,然而,我们对脑电图在识别驾驶时的认知分心方面的适用程度仍然有限。在本文中,我们提出了decision,这是一个使用脑电图与机器学习相结合来检测汽车驾驶员认知分心的系统。通过decision,我们研究了训练和评估数据收集之间的时间间隔对认知分心检测准确性的时间影响。我们的研究结果表明,当训练和评估数据来自同一驾驶时段时,decision能够以较高的准确率识别认知分心。此外,我们确定了不同驱动器之间增加的时间跨度对检测精度的时间影响,导致分类精度降低。最后,我们讨论了利用脑电图进行认知注意识别的研究结果,以及如何对不同类型的干扰进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Impact on Cognitive Distraction Detection for Car Drivers using EEG
Electroencephalography (EEG) has the potential to measure a person’s cognitive state, however, we still only have limited knowledge about how well-suited EEG is for recognising cognitive distraction while driving. In this paper, we present DeCiDED, a system that uses EEG in combination with machine learning to detect cognitive distraction in car drivers. Through DeCiDED, we investigate the temporal impact, of the time between the collection of training and evaluation data, and the detection accuracy for cognitive distraction. Our results indicate, that DeCiDED can recognise cognitive distraction with high accuracy when training and evaluation data are originating from the same driving session. Further, we identify a temporal impact, resulting in reduced classification accuracy, of an increased time-span between different drives on the detection accuracy. Finally, we discuss our findings on cognitive attention recognition using EEG how to complement it to categorise different types of distractions.
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