A comparison of classification methods for recognizing single-trial ERP in RSVP-based brain-computer interfaces

Xiaolin Xiao, Minpeng Xu, Dong Ming
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Abstract

Event-related potentials (ERPs) are one of the most popular control signals for brain-computer interfaces (BCIs). Fast classifying ERPs is vital for the good performance of ERP BCIs. However, due to noisy background electroencephalography (EEG) environments, current ERP-based BCI systems need to collect multiple trials for a reliable output, which is inefficient. This study compared a recently developed algorithm, i.e. discriminative canonical pattern matching (DCPM), with five traditional classification methods, i.e. linear discriminant analysis (LDA), four advanced methods of LDA included stepwise LDA, Bayesian LDA, shrinkage LDA and spatial-temporal discriminant analysis (STDA), for the detection of single-trial ERPs with a small number of training samples. Public dataset from RSVP-speller, which would induce ERPs contained N200 and P300 components in ERPs, was addressed in this study. Study results showed that the DCPM significantly outperformed the other traditional methods in single-trial ERP classification in RSVP-based BCI even with small training samples, suggesting the DCPM is a promising classification algorithm for the ERP-BCI.
基于rsvp的脑机接口识别单试验ERP的分类方法比较
事件相关电位(event - correlation potential, ERPs)是脑机接口(bci)中最常用的控制信号之一。快速分类ERP对ERP bci的良好性能至关重要。然而,由于背景脑电图(EEG)环境的噪声,目前基于erp的BCI系统需要收集多个试验才能获得可靠的输出,这是低效的。本研究将近年来发展起来的判别典型模式匹配(discriminative canonical pattern matching, DCPM)算法与线性判别分析(linear discriminant analysis, LDA)、逐步判别分析(step - step LDA)、贝叶斯判别分析(Bayesian LDA)、收缩判别分析(shrinkage LDA)和时空判别分析(spatial-temporal discriminant analysis, STDA)等五种传统分类方法进行了比较,用于少量训练样本的单次erp检测。本研究对RSVP-speller的公共数据集进行了处理,该数据集会诱导erp中含有N200和P300成分。研究结果表明,即使在训练样本较小的情况下,DCPM在基于rsvp的BCI的单试验ERP分类中也明显优于其他传统方法,表明DCPM是一种很有前途的ERP-BCI分类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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