MI-based BCI with accurate real-time three-class classification processing and light control application

Author:

Zhang Jiakai1,Xu Boyang1,Lou Xiongjie1,Wu Yan1,Shen Xiaoyan12

Affiliation:

1. School of Information Science and Technology, Nantong University, Nantong, China

2. Nantong Research Institute for Advanced Communication Technologies, Nantong University, Nantong, China

Abstract

The use of brain–computer interfaces (BCIs) to control intelligent devices is a current and future research direction. However, the challenges of low accuracy of real-time recognition and the need for multiple electroencephalographic channels are yet to be overcome. While a number of research teams have proposed many ways to improve offline classification accuracy, the potential problems in real-time experiments are often overlooked. In this study, we proposed a label-based channel diversion preprocessing to solve the problem of low real-time classification accuracy. The Tikhonov regularised common spatial-pattern algorithm (TRCSP) and one vs rest support vector machine (OVR-SVM) were used for feature extraction and pattern classification. High accuracy was achieved in real-time three-class classification using only three channels (average real-time accuracy of 87.46%, with a maximum of 90.33%). In addition, the stability and reliability of the system were verified through lighting control experiments in a real environment. Using the autonomy of MI and real-time feedback of light brightness, we have built a fully autonomous interactive system. The improvement in the real-time classification accuracy in this study is of great significance to the industrialisation of BCI.

Funder

the ‘226 Engineering’ Research Project of Nantong Government

the ‘Six talents peaks’ Project

National Natural Science Foundation of China

the Postgraduate Research & Practice Innovation Program of Jiangsu Province

Publisher

SAGE Publications

Subject

Mechanical Engineering,General Medicine

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