{"title":"采用在线自适应和半监督学习的滤波器组公共空间模式(FBCSP)算法","authors":"K. Ang, Z. Chin, Haihong Zhang, Cuntai Guan","doi":"10.1109/IJCNN.2011.6033248","DOIUrl":null,"url":null,"abstract":"The Filter Bank Common Spatial Pattern (FBCSP) algorithm employs multiple spatial filters to automatically select key temporal-spatial discriminative EEG characteristics and the Naïve Bayesian Parzen Window (NBPW) classifier using offline learning in EEG-based Brain-Computer Interfaces (BCI). However, it has yet to address the non-stationarity inherent in the EEG between the initial calibration session and subsequent online sessions. This paper presents the FBCSP that employs the NBPW classifier using online adaptive learning that augments the training data with available labeled data during online sessions. However, employing semi-supervised learning that simply augments the training data with available data using predicted labels can be detrimental to the classification accuracy. Hence, this paper presents the FBCSP using online semi-supervised learning that augments the training data with available data that matches the probabilistic model captured by the NBPW classifier using predicted labels. The performances of FBCSP using online adaptive and semi-supervised learning are evaluated on the BCI Competition IV datasets IIa and IIb and compared to the FBCSP using offline learning. The results showed that the FBCSP using online semi-supervised learning yielded relatively better session-to-session classification results compared against the FBCSP using offline learning. The FBCSP using online adaptive learning on true labels yielded the best results in both datasets, but the FBCSP using online semi-supervised learning on predicted labels is more practical in BCI applications where the true labels are not available.","PeriodicalId":415833,"journal":{"name":"The 2011 International Joint Conference on Neural Networks","volume":"2 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2011-10-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"31","resultStr":"{\"title\":\"Filter Bank Common Spatial Pattern (FBCSP) algorithm using online adaptive and semi-supervised learning\",\"authors\":\"K. Ang, Z. 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引用次数: 31
摘要
滤波器组公共空间模式(Filter Bank Common Spatial Pattern, FBCSP)算法采用多个空间滤波器自动选择关键的时空判别性脑电特征,并在脑机接口(BCI)中采用离线学习的Naïve贝叶斯帕森窗(NBPW)分类器。然而,它还没有解决在初始校准会话和随后的在线会话之间的脑电图固有的非平稳性。本文提出了使用在线自适应学习的NBPW分类器的FBCSP,该分类器在在线会话期间使用可用的标记数据来增强训练数据。然而,使用半监督学习,即使用预测标签简单地用可用数据增强训练数据,可能会损害分类精度。因此,本文提出了使用在线半监督学习的FBCSP,该方法使用与NBPW分类器使用预测标签捕获的概率模型相匹配的可用数据来增强训练数据。在BCI Competition IV数据集IIa和IIb上评估了使用在线自适应和半监督学习的FBCSP的性能,并与使用离线学习的FBCSP进行了比较。结果表明,与使用离线学习的FBCSP相比,使用在线半监督学习的FBCSP产生了相对更好的会话到会话分类结果。在真实标签上使用在线自适应学习的FBCSP在两个数据集中都产生了最好的结果,但是在真实标签不可用的BCI应用中,在预测标签上使用在线半监督学习的FBCSP更实用。
Filter Bank Common Spatial Pattern (FBCSP) algorithm using online adaptive and semi-supervised learning
The Filter Bank Common Spatial Pattern (FBCSP) algorithm employs multiple spatial filters to automatically select key temporal-spatial discriminative EEG characteristics and the Naïve Bayesian Parzen Window (NBPW) classifier using offline learning in EEG-based Brain-Computer Interfaces (BCI). However, it has yet to address the non-stationarity inherent in the EEG between the initial calibration session and subsequent online sessions. This paper presents the FBCSP that employs the NBPW classifier using online adaptive learning that augments the training data with available labeled data during online sessions. However, employing semi-supervised learning that simply augments the training data with available data using predicted labels can be detrimental to the classification accuracy. Hence, this paper presents the FBCSP using online semi-supervised learning that augments the training data with available data that matches the probabilistic model captured by the NBPW classifier using predicted labels. The performances of FBCSP using online adaptive and semi-supervised learning are evaluated on the BCI Competition IV datasets IIa and IIb and compared to the FBCSP using offline learning. The results showed that the FBCSP using online semi-supervised learning yielded relatively better session-to-session classification results compared against the FBCSP using offline learning. The FBCSP using online adaptive learning on true labels yielded the best results in both datasets, but the FBCSP using online semi-supervised learning on predicted labels is more practical in BCI applications where the true labels are not available.