Classification of Single-Trial Self-paced Finger Tapping Motion for BCI Applications

Atiq Ahmed Tahirl, M. Arif
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引用次数: 2

Abstract

Brain-computer interface provides a new communication paradigm between the human and machine, thus allowing physically impaired and paralyzed patients to control devices with the aid of brain activity alone, instead of using normal brain output pathways. In this paper, we present an algorithm to classify single-trial electroencephalogram (EEG) during the preparation of self-paced key tapping based on common spatial subspace decomposition (CSSD). Resulting 28 features for a trial from CSSD are classified using three classifiers (1) linear discriminant analysis, (2) quadratic discriminant analysis and (3) support vector machine. For two class problem, linear subspaces are estimated using CSSD analysis that maximizes the variance of the signal for one class while minimizes the variance of the other. Improvement in the proposed work includes reduction in the number of features to 28 only that result in a significant decrease in computational complexity while improving the accuracy of classification from earlier reported 86% to 88% using data set IV of BCI Competition 2003.
脑机接口应用中单次自定节奏手指敲击动作的分类
脑机接口在人与机器之间提供了一种新的通信范式,从而允许身体受损和瘫痪的患者仅借助大脑活动来控制设备,而不是使用正常的大脑输出途径。本文提出了一种基于公共空间子空间分解(CSSD)的自定节奏按键准备过程中单次脑电图(EEG)分类算法。使用三种分类器(1)线性判别分析,(2)二次判别分析和(3)支持向量机对CSSD试验的28个特征进行分类。对于两类问题,使用CSSD分析估计线性子空间,该分析最大化一类信号的方差,同时最小化另一类信号的方差。所提出的工作的改进包括将特征数量减少到28个,这使得计算复杂度显著降低,同时使用2003年BCI竞赛的数据集IV将分类准确率从早期报道的86%提高到88%。
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