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Improving brain-computer interface classification using adaptive common spatial patterns

机译:使用自适应常见空间模式改善脑机接口分类

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Common Spatial Patterns (CSP) is a widely used spatial filtering technique for electroencephalography (EEG)-based brain-computer interface (BCI). It is a two-class supervised technique that needs subject-specific training data. Due to EEG nonstationarity, EEG signal may exhibit significant intra- and inter-subject variation. As a result, spatial filters learned from a subject may not perform well for data acquired from the same subject at a different time or from other subjects performing the same task. Studies have been performed to improve CSP's performance by adding regularization terms into the training. Most of them require target subjects' training data with known class labels. In this work, an adaptive CSP (ACSP) method is proposed to analyze single trial EEG data from single and multiple subjects. The method does not estimate target data's class labels during the adaptive learning and updates spatial filters for both classes simultaneously. The proposed method was evaluated based on a comparison study with the classic CSP and several CSP-based adaptive methods using motor imagery EEG data from BCI competitions. Experimental results indicate that the proposed method can improve the classification performance as compared to the other methods. For circumstances where true class labels of target data are not instantly available, it was examined if adding classified target data to training data would improve the ACSP learning. Experimental results show that it would be better to exclude them from the training data. The proposed ACSP method can be performed in real-time and is potentially applicable to various EEG-based BCI applications. (C) 2015 Elsevier Ltd. All rights reserved.
机译:通用空间模式(CSP)是基于脑电图(EEG)的脑机接口(BCI)广泛使用的空间过滤技术。这是一种两类受监管的技术,需要特定学科的培训数据。由于EEG不稳定,EEG信号可能会出现明显的受试者内和受试者间差异。结果,从对象学习的空间滤波器对于在不同时间从同一对象或从执行相同任务的其他对象获取的数据可能效果不佳。通过在培训中添加正则化术语来进行研究以提高CSP的性能。他们中的大多数都要求目标受试者的训练数据带有已知的班级标签。在这项工作中,提出了一种自适应CSP(ACSP)方法来分析来自单个和多个受试者的单个试验EEG数据。该方法在自适应学习期间不会估计目标数据的类别标签,并且会同时更新两个类别的空间过滤器。基于与经典CSP的比较研究和使用来自BCI竞赛的运动图像EEG数据的几种基于CSP的自适应方法,对提出的方法进行了评估。实验结果表明,与其他方法相比,该方法可以提高分类性能。对于无法立即获得目标数据的真实分类标签的情况,我们检查了将分类目标数据添加到训练数据中是否可以改善ACSP学习。实验结果表明,将它们从训练数据中排除会更好。所提出的ACSP方法可以实时执行,并且可能适用于各种基于EEG的BCI应用。 (C)2015 Elsevier Ltd.保留所有权利。

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