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Three-class classification of motor imagery EEG data including “rest state” using filter-bank multi-class Common Spatial pattern

机译:使用滤波器组多类公共空间模式对运动图像脑电数据进行三类分类,包括“静止状态”

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Our purpose is to develop the 3-class Brain Machine Interface (BMI) incorporating the classification of resting state using Electroencephalography (EEG). Conventionally the most of BMI systems only accept EEG data when a subject performs some kind of task, such as motor imagery and gaze at visual stimuli. However, performing task causes fatigue of the subject. It is therefore important to develop classification algorithm for BMI system that utilizes rest state-EEG as one of the classes. The 3 classes we defined in this experiment were: (1) motor imagery of moving right hand; (2) motor imagery of moving left hand; and (3) rest state. And, we also measured EEG in an actual moving task (finger tapping) to ascertain validity of algorithm. We extracted feature vector using Finite Impulse Response (FIR) digital filter Filter Bank and multi-class Common Spatial Filter (mCSP) from EEG data, selected the feature by Mutual Information (MI), and made three 3-class classifiers using Random Forest (RF). The mean classification rate was 56.7±4.43% at motor imagery task and 88.7±4.54% at actual finger tapping task. And we compared the time required to extract features and compute classifiers with those of other methods. Our method is effective to some extent. (1) parameter selection time was better than choosing single band-pass filter that best discriminate classes among possible options of frequency bands; and (2) accuracy rate was better than our previous method using majority vote.
机译:我们的目的是开发3类脑机接口(BMI),其中包括使用脑电图(EEG)对静止状态进行分类的功能。传统上,大多数BMI系统仅在对象执行某种任务(例如运动图像和注视视觉刺激)时才接受EEG数据。但是,执行任务会导致对象疲劳。因此,重要的是开发一种将静止状态EEG作为其中一种的BMI系统分类算法。我们在本实验中定义的3个类别是:(1)右手运动的运动图像; (2)左手运动的运动图像; (3)休息状态。并且,我们还测量了实际运动任务(手指轻击)中的脑电图,以确定算法的有效性。我们使用有限冲激响应(FIR)数字滤波器Filter Bank和多类公共空间滤波器(mCSP)从EEG数据中提取特征向量,通过互信息(MI)选择特征,并使用随机森林(Random Forest)制作了三个3类分类器( RF)。运动成像任务的平均分类率为56.7±4.43%,而实际手指敲击任务的平均分类率为88.7±4.54%。然后,我们将提取特征和计算分类器所需的时间与其他方法进行了比较。我们的方法在一定程度上是有效的。 (1)参数选择时间比选择能在频段的可能选项中最好地区分类别的单带通滤波器要好; (2)准确率优于我们以前使用多数表决的方法。

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