Identification of Attention State for Menu-Selection using In-Ear EEG Recording

Donghwa Jeong, Jaeseung Jeong, Yongwook Chae, H. Choi
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引用次数: 4

Abstract

Conventional EEG devices have limitations for the use of Brain-Computer Interface (BCI) because they are uncomfortable to wear in daily life. Since most smartphone users use earphones, a novel Earphone-shaped EEG device, which measures EEG signals in the ear canal while maintaining functions of the earphone, can be powerful tools for BCI. In this report, the attention state recorded from in-ear EEG was discriminated from the resting state to use simple application of one-button menu selection. Power spectral densities (PSD) in eye-closed state, eye-open state, and attention state were compared using autoregressive (AR) Burg method. Using selected features from Fisher ratio, attention state was successfully classified from resting state with support vector machine (SVM). Based on this study, prototypes for stable recording and sound delivery are developing and real-time BCI application using earphone-shaped EEG device will be researched.
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基于耳内脑电图记录的菜单选择注意状态识别
传统的脑电图设备由于在日常生活中佩戴不舒适,在脑机接口(BCI)的使用上存在局限性。由于大多数智能手机用户使用耳机,一种新型的earphone形状的脑电图设备可以在保持耳机功能的情况下测量耳道内的脑电图信号,可以成为BCI的有力工具。在本报告中,通过一键菜单选择的简单应用,将耳内EEG记录的注意状态与静息状态进行区分。采用自回归(AR) Burg方法比较闭眼状态、睁眼状态和注意状态的功率谱密度(PSD)。利用Fisher比值选取的特征,利用支持向量机(SVM)对注意力状态和静息状态进行分类。在此基础上,我们正在开发稳定录音和声音传递的原型,并将研究利用耳机状脑电图设备实现脑机接口的实时应用。
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