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An Incremental Version of L-MVU for the Feature Extraction of MI-EEG

机译:L-MVU的增量版本,用于MI-EEG的特征提取

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Due to the nonlinear and high-dimensional characteristics of motor imagery electroencephalography (MI-EEG), it can be challenging to get high online accuracy. As a nonlinear dimension reduction method, landmark maximum variance unfolding (L-MVU) can completely retain the nonlinear features of MI-EEG. However, L-MVU still requires considerable computation costs for out-of-sample data. An incremental version of L-MVU (denoted as IL-MVU) is proposed in this paper. The low-dimensional representation of the training data is generated by L-MVU. For each out-of-sample data, its nearest neighbors will be found in the high-dimensional training samples and the corresponding reconstruction weight matrix be calculated to generate its low-dimensional representation as well. IL-MVU is further combined with the dual-tree complex wavelet transform (DTCWT), which develops a hybrid feature extraction method (named as IL-MD). IL-MVU is applied to extract the nonlinear features of the specific subband signals, which are reconstructed by DTCWT and have the obvious event-related synchronization/event-related desynchronization phenomenon. The average energy features of α and β waves are calculated simultaneously. The two types of features are fused and are evaluated by a linear discriminant analysis classifier. Based on the two public datasets with 12 subjects, extensive experiments were conducted. The average recognition accuracies of 10-fold cross-validation are 92.50% on Dataset 3b and 88.13% on Dataset 2b, and they gain at least 1.43% and 3.45% improvement, respectively, compared to existing methods. The experimental results show that IL-MD can extract more accurate features with relatively lower consumption cost, and it also has better feature visualization and self-adaptive characteristics to subjects. The t-test results and Kappa values suggest the proposed feature extraction method reaches statistical significance and has high consistency in classification.
机译:由于电动机图像脑电图(MI-EEG)的非线性和高尺​​寸特性,获得高在线准确性可能具有挑战性。作为非线性尺寸减少方法,地标最大方差展开(L-MVU)可以完全保留Mi-eeg的非线性特征。但是,L-MVU仍然需要相当大的计算成本,用于采样超出样本数据。本文提出了L-MVU(表示为IL-MVU)的增量版本。 L-MVU生成训练数据的低维表示。对于每个样本数据,其最接近的邻居将在高维训练样本中找到,并且计算相应的重建权重矩阵也可以产生其低维表示。 IL-MVU与双树复合小波变换(DTCWT)进一步结合,其开发混合特征提取方法(名为IL-MD)。应用IL-MVU以提取由DTCWT重建的特定子带信号的非线性特征,并具有明显的事件相关的同步/事件相关的去同步现象。同时计算α和β波的平均能量特征。这两种类型的特征是融合的,并通过线性判别分析分类来评估。基于具有12个受试者的两个公共数据集,进行了广泛的实验。 10倍交叉验证的平均识别精度在数据集3B上为92.50%,数据集2B上的88.13%,与现有方法相比,它们分别增加了至少1.43%和3.45%的改进。实验结果表明,IL-MD可以提取具有相对较低的消耗成本的更准确的特征,并且它还具有更好的特征可视化和自适应特性。 T检验结果和Kappa值表明所提出的特征提取方法达到统计学意义,并且在分类中具有高一致性。

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