Evaluation of different deep learning approaches for EEG classification

Bastian Scharnagl, Christian Groth
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Abstract

EEG classification is a promising approach to facilitate the life of handicapped people and to generate future human-computer-interfaces. In this paper we want to compare the effectiveness of current state of the art deep learning techniques for EEG classification. Therefore, we applied different approaches on various datasets and did a crosscomparison of the results in order to get more knowledge on the generalization capabilities. Additionally, we created a new EEG dataset and made it available for further research.
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脑电分类中不同深度学习方法的评价
脑电分类是一种很有前途的方法,可以方便残疾人的生活,并产生未来的人机界面。在本文中,我们想比较当前最先进的深度学习技术在脑电信号分类方面的有效性。因此,我们在不同的数据集上应用了不同的方法,并对结果进行了交叉比较,以获得更多关于泛化能力的知识。此外,我们创建了一个新的EEG数据集,并将其用于进一步的研究。
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