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A comparison of different dimensionality reduction and feature selection methods for single trial ERP detection

机译:单次ERP检测中不同维数缩减和特征选择方法的比较

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Dimensionality reduction and feature selection is an important aspect of electroencephalography based event related potential detection systems such as brain computer interfaces. In our study, a predefined sequence of letters was presented to subjects in a Rapid Serial Visual Presentation (RSVP) paradigm. EEG data were collected and analyzed offline. A linear discriminant analysis (LDA) classifier was designed as the ERP (Event Related Potential) detector for its simplicity. Different dimensionality reduction and feature selection methods were applied and compared in a greedy wrapper framework. Experimental results showed that PCA with the first 10 principal components for each channel performed best and could be used in both online and offline systems.
机译:降维和特征选择是基于脑电图的事件相关电势检测系统(如脑计算机接口)的重要方面。在我们的研究中,以快速串行视觉呈现(RSVP)范式向对象呈现了预定义的字母序列。收集脑电数据并离线分析。为了简化起见,将线性判别分析(LDA)分类器设计为ERP(事件相关电位)检测器。应用了不同的降维和特征选择方法,并在贪婪的包装器框架中进行了比较。实验结果表明,每个通道的前10个主要成分的PCA表现最佳,并且可以在在线和离线系统中使用。

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