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EEG signal classification for real-time brain-computer interface applications: A review

机译:实时脑机接口应用的EEG信号分类:综述

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Brain-computer interface (BCI) is linking the brain activity to computer, which allows a person to control devices directly with his brain waves and without any use of his muscles. Recent advances in real-time signal processing have made BCI a feasible alternative for controlling robot and for communication as well. Controlling devices using BCI is a crucial aid for people suffering from severe disabilities and more than that, BCIs can replace human to control robots working in dangerous or uncongenial situations. Effective BCIs demand for accurate and real-time EEG signals processing. This paper is to review the current state of research and to compare the performance of different algorithms for real-time classification of BCI-based electroencephalogram signals.
机译:脑机接口(BCI)将脑活动与计算机链接起来,这使一个人可以直接用脑电波控制设备,而无需使用任何肌肉。实时信号处理的最新进展使BCI成为控制机器人和通信的可行替代方案。使用BCI的控制设备对于严重残疾的人来说是至关重要的帮助,而且,BCI可以代替人来控制在危险或不愉快的情况下工作的机器人。有效的BCI要求准确,实时地进行EEG信号处理。本文综述了当前的研究现状,并比较了基于BCI的脑电图信号实时分类的不同算法的性能。

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