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Canonical correlation analysis of EEG for classification of motor imagery

机译:脑电图分类的规范相关性分析

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The performance of classification of various mental states using Electroencephalography (EEG) is often limited by the lack of information regarding the most discriminative channels and frequency bands. The paper proposes a Canonical Correlation Analysis (CCA) of EEG recorded during bilateral imagined hand movement. CCA determines linear transformation of EEG that is maximally correlated with a transformed version of neural response to imagined movement. In the proposed method, the linear weights are identified for the spatial and spectral components of EEG signal. The study investigates how the CCA-based transformation of the signal improves discrimination between two movement classes. Further, two parallel CCA blocks, determine two transformations of EEG, one that maximizes correlation with the corresponding class, and other that minimizes the correlation with the mismatched class. Features derived using this approach are used for single-trial classification of bilateral imagined hand movement. Time-frequency patterns of EEG derived from the proposed approach illustrate their discriminative ability in mu and beta bands. An average classification accuracy of 61.12% (109 subjects) and 73.34% (Best 40 subjects) are obtained. The results indicate the scope of CCA to obtain time-frequency representations of EEG and for single-trial classification of motor imagery (MI).
机译:使用脑电图(EEG)对各种精神状态分类的性能通常受到关于最辨别性信道和频带的信息的限制。本文提出了在双边想象的手动运动期间记录的脑电图的规范相关分析(CCA)。 CCA确定EEG的线性变换,其与变换的神经响应版本的变换形式的图像变为想象的运动。在所提出的方法中,识别线性重量的EEG信号的空间和光谱分量。该研究研究了信号的基于CCA的转换如何提高了两个运动类之间的歧视。此外,两个并行CCA块,确定脑电图的两个变换,最大化与相应类的相关性,以及其他最小化与不匹配类的相关性的相互关系。使用这种方法导出的功能用于双边想象的手动运动的单试性分类。源自所提出的方法的脑电图的时频模式说明了MU和β带中的鉴别能力。获得61.12 %(109个科目)和73.34 %(最佳40个科目)的平均分类准确度。结果表明CCA的范围,以获得EEG的时频表示和用于电动机图像的单次试验分类(MI)。

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