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Human Cognitive Control Mode Estimation Using JINS MEME

机译:基于JINS MEME的人类认知控制模式估计

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摘要

Abstract: In this study, a human cognitive control mode to determine human reliability is estimated using data obtained by eyewear called JINS MEME. This device can measure electro-oculography, acceleration, and angular rate without load on the subject. The computer game widely known as TETRIS is selected as a test task because the task difficulty affecting the subjects’ workload can be controlled by varying game speed. NASA-TLX is utilized to measure the subjective mental workload of 12 subjects. First, the blink rate measured by JINS MEME focusses as a parameter to reflect mental workload. Consequently, 10 out of 12 subjects show negative correlation between blink rate and NASA-TLX score. Thus, basic validity using this device to estimate mental workload is confirmed. Second, a machine algorithm, i.e., a support vector machine (SVM), is applied to the measured data to categorize the subject’s conditions into either Normal or Degraded. Additional parameters measured by JINS MEME are introduced as input data to the SVM. It is demonstrated that the SVM can categorize the subjects’ conditions with 80-90% accuracy, and that the reduction of input variables using principle component analysis results in higher categorization accuracy.
机译:摘要:在这项研究中,使用称为JINS MEME的眼镜获得的数据估算了确定人类可靠性的人类认知控制模式。该设备可以在没有负荷的情况下测量眼电位,加速度和角速度。选择被广泛称为TETRIS的计算机游戏作为测试任务是因为可以通过改变游戏速度来控制影响受试者工作量的任务难度。 NASA-TLX用于衡量12位受试者的主观心理负担。首先,JINS MEME测得的眨眼率是反映精神工作量的参数。因此,12名受试者中有10名的眨眼率与NASA-TLX得分呈负相关。因此,确认了使用该装置估计精神负荷的基本有效性。其次,将机器算法(即支持向量机(SVM))应用于测量数据,以将受试者的状况分类为“正常”或“退化”。由JINS MEME测量的其他参数作为输入数据引入SVM。结果表明,支持向量机可以将被摄对象的状况分类为80-90%的准确度,并且使用主成分分析减少输入变量可以提高分类准确度。

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