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Feature extraction and classification of EEG signals for mapping motor area of the brain

机译:脑电信号的特征提取和分类以绘制大脑运动区域

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This paper presents the study of open source electroencephalogram (EEG) data from 30 subjects performing actual motor tasks, for localizing brain motor areas responsible for the tasks. The extracted features from independent component analysis (ICA) of the EEG data are Gaussian weighted to obtain feature vectors. Two dimensional scalp maps are used for task based selection of features belonging to the primary and sensory motor regions of the brain. The final feature vectors thus obtained are given as input to two classifiers, viz. linear discriminant analysis (LDA) and quadratic discriminant analysis (QDA). Classification using LDA gives localization accuracies of 68.42% for right fist movement, 67.16% for left fist movement and 84.40% for both feet movement respectively. The corresponding classification accuracies for QDA were 92.98% for right fist movement, 70.15% for left fist movement and 98.58% for both feet tasks respectively. The average accuracy for motor task classification is 73.33% for LDA and 87.24% for QDA.
机译:本文介绍了来自30位执行实际运动任务的受试者的开放式脑电图(EEG)数据的研究,以定位负责该任务的大脑运动区域。从脑电数据的独立成分分析(ICA)中提取的特征经过高斯加权,以获得特征向量。二维头皮图用于基于任务的特征选择,这些特征属于大脑的主要运动和感觉运动区域。如此获得的最终特征向量被作为输入给两个分类器,即。线性判别分析(LDA)和二次判别分析(QDA)。使用LDA进行分类时,右拳运动的定位精度为68.42%,左拳运动的定位精度为67.16%,双脚运动的定位精度分别为84.40%。右拳动作的QDA对应分类准确度分别为92.98%,左拳动作的70.15%和双脚动作的98.58%。 LDA和QDA的运动任务分类的平均准确度分别为73.33%和87.24%。

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