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Feature consistency-based model adaptation in session-to-session classification: A study using motor imagery of swallow EEG signals

机译:会话到会话分类中基于特征一致性的模型适应:使用吞咽脑电信号运动图像的研究

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The performance degradation for session to session classification in brain computer interface is a critical problem. This paper proposes a novel method for model adaptation based on motor imagery of swallow EEG signal for dysphagia rehabilitation. A small amount of calibration testing data is utilized to select the model catering for test data. The features of the training and calibration testing data are firstly clustered and each cluster is labeled by the dominant label of the training data. The cluster with the minimum impurity is selected and the number of features consistent with the cluster label are calculated for both training and calibration testing data. Finally, the training model with the maximum number of consistent features is selected. Experiments conducted on motor imagery of swallow EEG data achieved an average accuracy of 74.29% and 72.64% with model adaptation for Laplacian derivates of power features and wavelet features, respectively. Further, an average accuracy increase of 2.9% is achieved with model adaptation using wavelet features, in comparison with that achieved without model adaptation, which is significant at 5% significance level as demonstrated in the statistical test.
机译:在脑计算机接口中,从会话到会话分类的性能下降是一个关键问题。本文提出了一种基于吞咽脑电信号运动图像的吞咽困难模型适应的新方法。利用少量的校准测试数据来选择适合测试数据的模型。首先对训练和校准测试数据的特征进行聚类,并且每个聚类都由训练数据的显性标签进行标记。选择杂质最少的簇,并为训练和校准测试数据计算与簇标签一致的特征数。最后,选择具有最大数量一致特征的训练模型。通过对功率特征和小波特征的拉普拉斯派生模型进行自适应,对吞咽脑电图数据的运动图像进行的实验分别实现了74.29%和72.64%的平均准确度。此外,与没有模型适应的情况相比,使用小波特征进行模型适应的平均准确性提高了2.9%,这在统计检验中显示为5%的显着性水平。

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