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Investigating Window Segmentation on Mental Fatigue Detection Using Single-Channel EEG

机译:使用单通道脑电图研究精神疲劳检测的窗口分割

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Mental fatigue condition can be a serious problem if it is not handled properly. It also has a correlation with acute or chronic illness. Many research has been done to detect mental fatigue condition using several methods. The Physiological method is proved as a robust indicator, one of which is electroencephalogram (EEG). EEG is the most widely used as a physiological indicator in the few decades. However, most of the research in mental fatigue detection based on EEG used long time segment and complex computation method. In this paper, a window segmentation was employed to investigate mental fatigue information that might contain in a specific segment. Power percentage feature was extracted from each segment. The detection of mental fatigue employs three classifiers, LDA, QDA, and SVM. According to our experiment, LDA yields the highest performance with 92.82 % of accuracy. This result obtained from 30s length window segment which contains only the first and the last segment of the EEG signal data points. This result showed that information of mental fatigue in EEG signal may be better detected in short time segment and can be found in specific window segment.
机译:如果处理不当,精神疲劳状况可能是一个严重的问题。它还与急性或慢性疾病相关。已经进行了许多研究以使用几种方法来检测精神疲劳状况。生理学方法被证明是一种可靠的指标,其中之一是脑电图(EEG)。脑电图是几十年来最广泛用作生理指标。然而,大多数基于脑电图的心理疲劳检测研究都使用了较长的时间段和复杂的计算方法。在本文中,使用窗口分割来调查可能包含在特定片段中的精神疲劳信息。从每个细分中提取功率百分比功能。精神疲劳的检测采用LDA,QDA和SVM这三个分类器。根据我们的实验,LDA以92.82%的精度提供了最高的性能。从仅包含EEG信号数据点的第一个和最后一个片段的30s长度窗口片段中获得的结果。该结果表明,在短时间段中可以更好地检测到EEG信号中的精神疲劳信息,并且可以在特定的窗口段中找到该信息。

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