中老年司机工作记忆任务中额叶脑电活动预测任务难度的自动判别

Koji Kashihara
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引用次数: 1

摘要

关注老年人大脑的特点,预防交通事故是可取的。驾驶过程中的注意力水平取决于信息处理资源的数量。本研究首先探讨了交通情景下工作记忆任务中注意水平变化对脑电图的影响。随着记忆负荷的增加,老年人的反应时间比年轻人延迟。在对目标进行选择性任务的过程中,困难的任务激活了诱发的[公式:见文]和[公式:见文]大脑额叶中线区域的能力,主要发生在老年人身上。老年人可以保持注意力水平,因为激活的慢脑电图反应,无论任务表现如何,尽管增加的波可能反映困倦。由于基于驾驶员脑信号的辅助系统可以预防交通事故,本研究还旨在评估从脑电信号中自动区分不同注意任务的分析方法。与[公式:见文]-最近邻和人工神经网络相比,支持向量机在工作记忆任务中更准确地分类了注意力水平(即任务难度),反映了诱发[公式:见文]和[公式:见文]波的变化。这一结果可能与脑机接口系统有关,该系统可以判断驾驶过程中的任务难度,并提醒司机注意危险。这项研究的实验任务是有限的,因为它们只涉及参与者识别引导板并删除无关信息的模拟。应该利用脑电图数据研究实时判断,以改进能够提醒驾驶员注意迎面而来的危险的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Discrimination of Task Difficulty Predicted by Frontal EEG Activity During Working Memory Tasks in Young and Elderly Drivers
It is desirable to prevent traffic accidents by focusing on elderly people’s brain characteristics. The attention level during driving depends on the amount of information-processing resources. This study first aimed at investigating the effects of the change in attention levels on the electroencephalogram (EEG) waves during the graded working memory tasks for a traffic situation. With the increase in memory loads, reaction times were delayed in the elderly than the young group. The difficult tasks activated the induced [Formula: see text] and [Formula: see text] powers in the frontal midline area primarily in the elderly, during the selective task for a target. The elderly could retain the attention level because of the activated slow EEG responses, regardless of the task performance, although the increased [Formula: see text] wave may reflect drowsiness. Because the assistance system based on drivers’ brain signals can prevent car accidents, this study also aimed at evaluating the analytical method to automatically discriminate the different attentional tasks from the EEG signals. Compared with [Formula: see text]-nearest neighbors and artificial neural networks, support vector machines more accurately classified attention levels (i.e., task difficulty) during working memory tasks reflecting a change in the induced [Formula: see text] and [Formula: see text] waves. This result can be related to a brain-computer interface system to judge the task difficulty during driving and alert a driver to danger. The experimental tasks for this study were limited because they involved simulations only in which participants recognized guided boards and removed irrelevant information. Real-time judgments should be investigated using EEG data to improve systems that can alert drivers to oncoming dangers.
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