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Performance analysis of LDA, QDA and KNN algorithms in left-right limb movement classification from EEG data

机译:基于脑电数据的LDA,QDA和KNN算法在左右肢运动分类中的性能分析

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Brain Computer Interface (BCI) improve the lifestyle of the normal people by enhancing their performance levels. It also provides a way of communication for the disabled people with their surrounding who are otherwise unable to physically communicate. BCI can be used to control computers, robots, prosthetic devices and other assistive technologies for rehabilitation. The dataset used for this study has been obtained from the BCI competition II 2003 databank provided by the University of Technology, Graz. After pre-processing of the signals from their electrodes (C3 & C4), the wavelet coefficients, Power Spectral Density of the alpha and the central beta band and the average power of the respective bands have been employed as features for classification. In one of the approaches we fed all the extracted features individually and in the other approach we considered all features together and submitted them to LDA, QDA and KNN algorithms distinctly to classify left and right limb movement. The aim of this study is to analyze the performance of linear discriminant analysis (LDA), quadratic discriminant analysis (QDA) and K-nearest neighbor (KNN) algorithms in differentiating the raw EEG data obtained, into their associative movement, namely, left-right movement. Also the importance of the feature vectors selected is highlighted in this study. The total set to feature vector comprising all the features (i.e., wavelet coefficients, PSD and average band power estimate) performed better with the classifiers without much deviation in the classification accuracy, i.e., 80%, 80% and 75.71% with LDA, QDA and KNN respectively. Wavelet coefficients performed best with QDA classifier with an accuracy of 80%. PSD vector resulted in superior performance of 81.43% with both QDA and KNN. Average band power estimate vector showed highest accuracy of 84.29% with KNN algorithm. Our approach presented in this paper is quite simple, easy to execute and is validated robustly with a larg--e dataset.
机译:脑计算机接口(BCI)通过提高正常人的绩效水平来改善其正常生活。它还为残障人士及其周围的残疾人提供了一种交流方式,否则他们将无法进行身体交流。 BCI可用于控制计算机,机器人,修复设备和其他辅助技术以进行康复。这项研究使用的数据集是从格拉茨工业大学提供的2003年BCI竞赛II的数据库中获得的。在对来自其电极(C3和C4)的信号进行预处理之后,小波系数,α和中央β谱带的功率谱密度以及各个谱带的平均功率已被用作分类的特征。在一种方法中,我们分别提取了所有提取的特征,而在另一种方法中,我们将所有特征综合考虑,并将它们分别提交给LDA,QDA和KNN算法以对左右肢运动进行分类。这项研究的目的是分析线性判别分析(LDA),二次判别分析(QDA)和K最近邻(KNN)算法在将获得的原始EEG数据区分为关联运动(即左移)时的性能。正确的运动。这项研究还强调了所选特征向量的重要性。包含所有特征(即小波系数,PSD和平均频带功率估计)的特征向量的总集合在分类器中表现更好,而分类精度没有太大的偏差,即使用LDA,QDA分别为80%,80%和75.71%和KNN分别。小波系数在QDA分类器中表现最好,准确度为80%。 PSD载体在QDA和KNN上均具有81.43%的出色性能。使用KNN算法,平均频带功率估计向量显示出84.29%的最高准确度。我们在本文中介绍的方法非常简单,易于执行,并且经过了较大的验证, -- 数据集。

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