Accuracy Improvement of fNIRS based Motor Imagery Movement Classification by Standardized Common Spatial Pattern

Md Faisal Kabir, Sheikh Md. Rabiul Islam, Md. Asadur Rahman
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引用次数: 9

Abstract

Motor imagery event classification from functional near-infrared spectroscopy (fNIRS) is one of the most interesting problems of the current brain-computer interfaces (BCIs) challenges. Feature extraction from multiple channel fNIRS signal is always challenging due to its high dimensionality. To reduce the feature dimension, common spatial pattern (CSP) is an effective method. The present research work proposes an algorithm named by standardized common spatial pattern (SCSP) based filtering method for fNIRS based motor imagery classification. This work used both the conventional CSP method and the proposed SCSP method to extract the features from the fNIRS signal through spatial filtering. The results revealed that the proposed SCSP algorithm outperformed the conventional CSP method and channel-wise methods for classifying the two motor imagery event classifications. In addition, it can improve the classification accuracy up to 17% (in average) and 7%(in average) with respect to the channel-wise feature extraction method and conventional CSP algorithm, respectively.
基于标准化公共空间模式的fNIRS运动图像分类精度提高
基于功能近红外光谱(fNIRS)的运动图像事件分类是当前脑机接口(bci)挑战中最有趣的问题之一。多通道近红外光谱信号的高维特征提取一直是一个难题。为了降低特征维数,公共空间模式(CSP)是一种有效的方法。本研究提出了一种基于标准化公共空间模式(SCSP)的滤波算法,用于基于近红外光谱的运动图像分类。本文采用传统的CSP方法和提出的SCSP方法对近红外光谱信号进行空间滤波提取特征。结果表明,该算法在两种运动图像事件分类方面优于传统的CSP方法和通道分类方法。此外,相对于通道特征提取方法和传统CSP算法,其分类准确率分别提高了17%(平均)和7%(平均)。
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