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Joint Time-Frequency-Space Classification of EEG in a Brain-Computer Interface Application

机译:脑电接口应用中脑电的时频空联合分类

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Brain-computer interface is a growing field of interest in human-computer interaction with diverse applications ranging from medicine to entertainment. In this paper, we present a system which allows for classification of mental tasks based on a joint time-frequency-space decorrelation, in which mental tasks are measured via electroencephalogram (EEG) signals. The efficiency of this approach was evaluated by means of real-time experimentations on two subjects performing three different mental tasks. To do so, a number of protocols for visualization, as well as training with and without feedback, were also developed. Obtained results show that it is possible to obtain good classification of simple mental tasks, in view of command and control, after a relatively small amount of training, with accuracies around 80%, and in real time.
机译:脑机接口在人机交互中具有越来越大的兴趣,涉及从医学到娱乐的各种应用。在本文中,我们提出了一种系统,该系统允许基于联合时频空间去相关来对心理任务进行分类,在该系统中,心理任务通过脑电图(EEG)信号进行测量。通过对执行三种不同心理任务的两个对象进行实时实验,评估了这种方法的效率。为此,还开发了许多可视化协议以及带有或不带有反馈的培训。所得结果表明,经过较少的训练,在命中率约为80%的情况下,根据命令和控制,可以对简单的心理任务进行良好的分类。

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