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Semi-supervised joint spatio-temporal feature selection for P300-based BCI speller

机译:基于P300的BCI拼写器的半监督联合时空特征选择

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摘要

In this paper, we address the important problem of feature selection for a P300-based brain computer interface (BCI) speller system in several aspects. Firstly, time segment selection and electroencephalogram channel selection are jointly performed for better discriminability of P300 and background signals. Secondly, in view of the situation that training data with labels are insufficient, we propose an iterative semi-supervised support vector machine for joint spatio-temporal feature selection as well as classification, in which both labeled training data and unlabeled test data are utilized. More importantly, the semi-supervised learning enables the adaptivity of the system. The performance of our algorithm has been evaluated through the analysis of a P300 dataset provided by BCI Competition 2005 and another dataset collected from an in-house P300 speller system. The results show that our algorithm for joint feature selection and classification achieves satisfactory performance, meanwhile it can significantly reduce the training effort of the system. Furthermore, this algorithm is implemented online and the corresponding results demonstrate that our algorithm can improve the adaptiveness of the P300-based BCI speller.
机译:在本文中,我们从几个方面解决了基于P300的脑计算机接口(BCI)拼写系统的特征选择的重要问题。首先,为了更好地区分P300和背景信号,共同执行了时间段选择和脑电图通道选择。其次,针对带有标签的训练数据不足的情况,我们提出了一种用于联合时空特征选择和分类的迭代半监督支持向量机,该方法同时利用了标记的训练数据和未标记的测试数据。更重要的是,半监督学习使系统具有适应性。通过对BCI Competition 2005提供的P300数据集以及从内部P300拼写系统收集的另一个数据集进行分析,评估了我们算法的性能。结果表明,我们的联合特征选择和分类算法取得了令人满意的性能,同时可以显着减少系统的训练工作量。此外,该算法是在线实现的,相应的结果表明我们的算法可以提高基于P300的BCI拼写器的自适应性。

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