基于k-NN和投票方案的脑电运动图像分类窄窗特征提取

A. Wijaya, T. B. Adji, Noor Akhmad Setiawan
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引用次数: 2

摘要

由于脑电信号具有非平稳性、主体内依赖性和主体间依赖性的特点,在基于脑电信号的运动意象分类中,实现一致的准确率仍然是一个很大的挑战。为了解决这一问题,我们提出了基于信道实例化方法的窄窗口统计测量特征提取方案。在本研究中,使用k近邻和投票方案作为最终决定,在某个类别中检测最多的将成为获胜者。在将脑电信号通道实例化或记录化的通道实例化方案中,将118个通道减少到17个具有运动相关活动的脑电信号通道。我们在提出的方法中研究了五种窄窗组合,即:一、二、三、四和五窗。BCI竞赛III数据集IVa用于评估我们提出的方法。实验结果表明,一窗全通道和五窗减少通道的组合以最高的精度和最低的标准差优于所有先前的研究。结果表明,我们提出的方法具有一致的精度,有望用于可靠的BCI系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Narrow Window Feature Extraction for EEG-Motor Imagery Classification using k-NN and Voting Scheme
Achieving consistent accuracy still big challenge in EEG based Motor Imagery classification since the nature of EEG signal is non-stationary, intra-subject and inter-subject dependent. To address this problems, we propose the feature extraction scheme employing statistical measurements in narrow window with channel instantiation approach. In this study, k-Nearest Neighbor is used and a voting scheme as final decision where the most detection in certain class will be a winner. In this channel instantiation scheme, where EEG channel become instance or record, seventeen EEG channels with motor related activity is used to reduce from 118 channels. We investigate five narrow windows combination in the proposed methods, i.e.: one, two, three, four and five windows. BCI competition III Dataset IVa is used to evaluate our proposed methods. Experimental results show that one window with all channel and a combination of five windows with reduced channel outperform all prior research with highest accuracy and lowest standard deviation. This results indicate that our proposed methods achieve consistent accuracy and promising for reliable BCI systems.
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