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Wavelets and ensemble of FLDs for P300 classification

机译:用于P300分类的FLD的小波和合奏

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Over the last few years various P300 classification algorithms have been assessed using the P300 data provided by the Wadsworth center for brain-computer interface (BCI) competitions II and III. In this paper a novel method of P300 classification is presented and compared to the state of the art results obtained for BCI competition II data set lib and BCI competition III data set II. The novel classification method includes discrete-wavelet transform (DWT) preprocessing and an ensemble of Fisher's linear discriminants for classification. The performance of the proposed method is as good as the state of the art method for the BCI competition II data set and only slightly worse than the state of the art method for BCI competition III data sets. Furthermore the proposed method is far less computationally expensive than the current state of the art method and could be modified for adaptive behavior in an online system.
机译:在过去的几年中,已经使用Wadsworth中心提供的P300数据针对脑机接口(BCI)竞赛II和III评估了各种P300分类算法。本文提出了一种新的P300分类方法,并将其与BCI竞赛II数据集lib和BCI竞赛III数据集II的现有技术结果进行了比较。新颖的分类方法包括离散小波变换(DWT)预处理和用于分类的Fisher线性判别式的集合。所提出的方法的性能与BCI竞赛II数据集的最新方法一样好,并且仅稍差于BCI竞赛III数据集的最新方法。此外,所提出的方法在计算上远不如当前技术水平的方法昂贵,并且可以针对在线系统中的自适应行为进行修改。

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