Deep transfer learning for error decoding from non-invasive EEG

M. Völker, R. Schirrmeister, L. Fiederer, Wolfram Burgard, T. Ball
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引用次数: 36

Abstract

We recorded high-density EEG in a flanker task experiment (31 subjects) and an online BCI control paradigm (4 subjects). On these datasets, we evaluated the use of transfer learning for error decoding with deep convolutional neural networks (deep ConvNets). In comparison with a regularized linear discriminant analysis (rLDA) classifier, ConvNets were significantly better in both intra- and inter-subject decoding, achieving an average accuracy of 84.1 % within subject and 81.7 % on unknown subjects (flanker task). Neither method was, however, able to generalize reliably between paradigms. Visualization of features the ConvNets learned from the data showed plausible patterns of brain activity, revealing both similarities and differences between the different kinds of errors. Our findings indicate that deep learning techniques are useful to infer information about the correctness of action in BCI applications, particularly for the transfer of pre-trained classifiers to new recording sessions or subjects.
基于深度迁移学习的非侵入性脑电图错误解码
我们在侧侧任务实验(31例)和BCI在线控制范式(4例)中记录了高密度脑电图。在这些数据集上,我们评估了使用深度卷积神经网络(deep ConvNets)进行错误解码的迁移学习。与正则化线性判别分析(rLDA)分类器相比,卷积神经网络在主题内和主题间解码方面都明显更好,主题内的平均准确率为84.1%,未知主题(侧卫任务)的平均准确率为81.7%。然而,这两种方法都不能可靠地在范式之间进行推广。卷积神经网络从数据中学习到的可视化特征显示了大脑活动的合理模式,揭示了不同类型错误之间的相似性和差异性。我们的研究结果表明,深度学习技术对于推断BCI应用程序中操作正确性的信息很有用,特别是对于将预训练的分类器转移到新的记录会话或主题。
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