Linear Classifier Approach to Detect Alpha Parietal Modulation for Brain Computer Interface

Wafaa Khazaal Shams, U. Qidwai
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Abstract

Brain computer interaction (BCI) based on electroencephalographic (EEG) signal helps people who suffering from disability to carry out their daily life. However, the numerus number of researches have done in this field, there are problems of high variance in accuracy and in efficiency among individuals. This paper presents a recognition method for eyes open (EO) and eyes closed(EC) of EEG signal using one channel P5. The model has tested to control a servo motor. A two types of feature are investigated; Energy of alpha power spectrum (EPSD) and relative alpha power (RAP). Further a linear discriminate analysis (LDA) and a nonlinear support vector machine (SVM) classifier are used. The used data are offline signals of 10 children age (4-5) years old. Results indicate the efficiency of EPSD hence the accuracy reaches to 95% for 2 sec time interval and 93.4% for 1 sec time interval. The RAP feature accuracy is 78.7%. The LDA has a significant performance compare to SVM. Both classifiers show high performance to detect EO event better than EC event. This study shows the ability of build EEG-BCI using one channel and with less computation process which can be affordable to most people with disability.
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基于线性分类器的脑机接口顶叶调制检测
基于脑电图(EEG)信号的脑机交互(BCI)帮助残疾人进行日常生活。然而,在这一领域所做的大量研究中,存在着个体之间准确性和效率差异较大的问题。本文提出了一种基于单通道P5的脑电信号睁眼和闭眼识别方法。该模型已经过伺服电机控制测试。研究了两类特征;能量的α功率谱(EPSD)和相对α功率(RAP)。进一步使用线性判别分析(LDA)和非线性支持向量机(SVM)分类器。使用的数据是10个4-5岁儿童的离线信号。结果表明,EPSD在2秒和1秒时间间隔内的准确率分别达到95%和93.4%。RAP特征准确率为78.7%。与支持向量机相比,LDA具有显著的性能。两种分类器在检测EO事件上都表现出比EC事件更好的性能。本研究证明了单通道构建脑电脑接口的能力,且计算量少,大多数残障人士都能负担得起。
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