Detecting the early drop of attention using EEG signal

F. Gunawan, Krisantus Wanandi, B. Soewito, S. Candra, N. Sekishita
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引用次数: 7

Abstract

The capability to detect the drop of attention as early as possible has many practical applications including for the development of the early warning system for those who involve in high-risk works that require a constant level of concentration. This study intends to develop such the capability on the basis of the data of the brain waves: delta, theta, alpha, beta, and gamma. For the purpose, a number of participants are asked to participate in the study where their brain waves are recorded by using a low-cost Neurosky Mindwave EEG sensor. In the process, the participants are performing a continuous performance test from which their attention levels are directly measured in the form of the response time in conjunction to those waves. When the response time is much longer than a normal one, the participant attention is assumed to be dropped. A simple k-NN classification method is used with the k = 3. The results are the following. The best detection of the attention drop is achieved when the attention features are extracted from the earliest stage of the brain wave signals. The brain wave signal should be recorded longer than 1 s since the time the stimulus is presented as a short signal leads to a poor categorization. A significant drop in the level of response time is required to provide the brain signal that better predicts the change of the attention.
利用脑电图信号检测早期注意力下降
尽早发现注意力转移的能力有许多实际应用,包括为那些从事需要持续集中注意力的高风险工作的人开发早期预警系统。本研究拟以delta, theta, alpha, beta和gamma的脑电波数据为基础,开发这种能力。为此,许多参与者被要求参与这项研究,他们的脑电波被使用低成本的Neurosky脑电波EEG传感器记录下来。在这个过程中,参与者正在进行一个连续的表现测试,他们的注意力水平直接以响应这些波的时间的形式被测量出来。当响应时间比正常时间长得多时,假设参与者的注意力被丢弃。使用k = 3的简单k- nn分类方法。结果如下。当从脑电波信号的最早期阶段提取注意特征时,可以实现对注意力下降的最佳检测。脑电波信号的记录时间应超过15秒,因为刺激作为短信号呈现的时间会导致分类不良。反应时间水平的显著下降需要提供更好地预测注意力变化的大脑信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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