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Multiclass Classification of Brain-Computer Interface Motor Imagery System: A Systematic Literature Review

机译:脑电脑界面电机图像系统的多款分类:系统文献综述

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The Brain-Computer Interface (BCI) is a great concept that enables people to interact with external devices solely through their brain signals. Motor imagery (MI), in which the acquired signals are captured from limb movements' imagination, is one of the most popular BCI research topics. For people with disabilities, this concept could be beneficial. The most common research for BCI MI classification has so far focused on a binary classification problem. In a real-world situation, however, the machine will need to train and differentiate more than two classes or solve a multiclass classification problem. Therefore, to summarize the research on multiclass BCI MI classification, this paper will conduct a systematic literature review for 30 articles that have gone through the selection process. This review found that the most used dataset in Multiclass BCI MI-EEG System is BCI Competition IV dataset 2a. As for the feature extraction method and classification method, most researchers used computationally inexpensive and stable methods. However, some of the researchers use more complex methods such as Fourier Transform as a feature extraction method and a Deep Learning-based classifier as a classification method.
机译:脑电脑界面(BCI)是一个很好的概念,使人们能够仅通过其大脑信号与外部设备交互。电动机图像(MI),其中所获取的信号从肢体运动的想象中捕获,是最受欢迎的BCI研究主题之一。对于残疾人来说,这个概念可能是有益的。到目前为止,BCI MI分类最常见的研究旨在重点是二进制分类问题。然而,在真实世界的情况下,机器需要培训和区分多种课程或解决多条分类问题。因此,总结了对多牌BCI MI分类的研究,本文将对经历过选择过程的30篇文章进行系统的文献综述。此审查发现,Multiclass BCI MI-EEG系统中最常用的数据集是BCI竞赛IV数据集2a。至于特征提取方法和分类方法,大多数研究人员使用了计算地廉价且稳定的方法。然而,一些研究人员使用更复杂的方法,例如傅立叶变换作为特征提取方法和基于深度学习的分类器作为分类方法。

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