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Learning Adaptive Subject-independent P300 Models for EEG-based Brain-Computer Interfaces

机译:学习自适应主题独立的P300模型,用于基于EEG的脑电电脑界面

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This paper proposes an approach to learn subject-independent P300 models for EEG-based brain-computer interfaces. The P300 models are first learned using a pool of existing subjects and Fisher linear discriminant, and then autonomously adapted to the unlabeled data of a new subject using an unsupervised machine learning technique. In data analysis, we apply this technique to a set of EEG data of 10 subjects performing word spelling in an oddball paradigm. The results are very positive: the adapted models with unlabeled data yield virtually the same classification accuracy as the conventional methods with labeled data. Therefore, it proves the feasibility of P300-based BCIs which can be applied directly to a new subject without training sessions.
机译:本文提出了一种学习独立于脑电图的脑电脑接口的主题P300模型的方法。首先使用现有的主题和Fisher线性判别池学习P300模型,然后使用无监督的机器学习技术自动适应新对象的未标记数据。在数据分析中,我们将该技术应用于10个科目的一组EEG数据,在奇怪的壁球范式中执行单词拼写。结果非常正:具有未标记数据的适应性模型,几乎与具有标记数据的传统方法的分类准确性几乎相同。因此,它证明了基于P300的BCI的可行性,可以直接应用于新主题而不培训会议。

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