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Multilinear Discriminative Spatial Patterns for Movement-Related Cortical Potential Based on EEG Classification with Tensor Representation

机译:基于张量表示脑电图分类的运动相关皮层电位多线性判别空间模式

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摘要

The discriminative spatial patterns (DSP) algorithm is a classical and effective feature extraction technique for decoding of voluntary finger premovements from electroencephalography (EEG). As a purely data-driven subspace learning algorithm, DSP essentially is a spatial-domain filter and does not make full use of the information in frequency domain. The paper presents multilinear discriminative spatial patterns (MDSP) to derive multiple interrelated lower dimensional discriminative subspaces of low frequency movement-related cortical potential (MRCP). Experimental results on two finger movement tasks' EEG datasets demonstrate the effectiveness of the proposed MDSP method.
机译:判别性空间模式 (DSP) 算法是一种经典且有效的特征提取技术,用于解码脑电图 (EEG) 中的自主手指前运动。DSP作为一种纯数据驱动的子空间学习算法,本质上是一种空间域滤波器,并没有充分利用频域中的信息。该文提出了多线性判别空间模式(MDSP)来推导多个相互关联的低频运动相关皮质电位(MRCP)的低维判别子空间。在两个手指运动任务的脑电数据集上的实验结果证明了所提出的MDSP方法的有效性。

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