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Different classification techniques considering brain computer interface applications

机译:考虑脑计算机接口应用程序的不同分类技术

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In this work the application of different machine learning techniques for classification of mental tasks from electroencephalograph (EEG) signals is investigated. The main application for this research is the improvement of brain computer interface (BCI) systems. For this purpose, Bayesian graphical network, neural network, Bayesian quadratic, Fisher linear and hidden Markov model classifiers are applied to two known EEG datasets in the BCI field. The Bayesian network classifier is used for the first time in this work for classification of EEG signals. The Bayesian network appeared to have a significant accuracy and more consistent classification compared to the other four methods. In addition to classical correct classification accuracy criteria, the mutual information is also used to compare the classification results with other BCI groups.
机译:在这项工作中,研究了将不同的机器学习技术用于根据脑电图(EEG)信号对心理任务进行分类的应用。这项研究的主要应用是脑计算机接口(BCI)系统的改进。为此,将贝叶斯图形网络,神经网络,贝叶斯二次,费舍尔线性和隐马尔可夫模型分类器应用于BCI字段中的两个已知EEG数据集。贝叶斯网络分类器在这项工作中首次用于脑电信号的分类。与其他四种方法相比,贝叶斯网络似乎具有很高的准确性和更一致的分类。除了经典的正确分类准确度标准外,相互信息还用于将分类结果与其他BCI组进行比较。

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