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Comparison of EEG blind source separation techniques to improve the classification of P300 trials

机译:EEG盲源分离技术的比较改善P300试验分类

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This paper provides a comparison of several blind source separation (BSS) techniques as they are applied to EEG signals. Specifically, this work focuses on the P300 speller paradigm and assesses the classification accuracies for the identification of P300 trials. Previous work has shown that BSS methods such as independent component analysis (ICA) are useful in extracting the P300 source information from the background noise, increasing the classification rates. ICA will be compared with two other BSS methods, maximum noise fraction (MNF) and principal component analysis (PCA). In addition to this, we will analyze the effect of adding temporal information to the original data, which allows these BSS algorithms to find more complex spatio-temporal patterns.
机译:本文提供了几种盲源分离(BSS)技术的比较,因为它们应用于EEG信号。具体而言,这项工作侧重于P300拼写范式并评估识别P300试验的分类精度。以前的工作表明,BSS方法如独立分量分析(ICA)可用于从背景噪声中提取P300源信息,增加分类率。将与另外两种BSS方法,最大噪声分数(MNF)和主成分分析(PCA)进行比较。除此之外,我们还将分析将时间信息添加到原始数据的效果,这允许这些BSS算法找到更复杂的时空模式。

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