Murata Atsuo
Hiroshima City University, Department of Computer and Media Technologies, Asaminami-ku, Japan.
Hum Factors. 2005 Fall;47(3):498-508. doi: 10.1518/001872005774860096.
An attempt was made to evaluate mental workload using a wavelet transform of electroencephalographic (EEG) signals. Participants performed a continuous matching task at three levels of task difficulty. EEG signals during the task were recorded continuously from Fz, Cz, and Pz. The reaction time increased as the difficulty of the task increased. The percentage correct decreased as the task became more difficult. In accordance with this, the rating score on the NASA-Task Load Index tended to increase with increased task difficulty. The EEG signals were analyzed using wavelet transform to investigate time-frequency characteristics. The total power at theta, alpha, and beta frequency bands and the time that the maximum power appeared for the three frequency bands were extracted from the scalogram. Increasing cognitive task difficulty seems to delay the time at which the central nervous system works most actively. These measures were found to be sensitive indicators of mental workload and could differentiate three cognitive task loads (low, moderate, and high) with high precision. Actual or potential applications of this research include a method that is relatively quick and accurate, compared with traditional methods, for the evaluation of mental workload.
人们尝试使用脑电图(EEG)信号的小波变换来评估心理负荷。参与者在三种任务难度水平下执行连续匹配任务。任务期间的EEG信号从Fz、Cz和Pz连续记录。反应时间随着任务难度的增加而增加。正确率随着任务变得更难而降低。据此,NASA任务负荷指数的评分倾向于随着任务难度的增加而增加。使用小波变换分析EEG信号以研究时频特征。从频谱图中提取θ、α和β频段的总功率以及这三个频段最大功率出现的时间。认知任务难度的增加似乎会延迟中枢神经系统最活跃工作的时间。这些指标被发现是心理负荷的敏感指标,并且能够高精度地区分三种认知任务负荷(低、中、高)。与传统方法相比,本研究的实际或潜在应用包括一种相对快速且准确的心理负荷评估方法。