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A Feature Filter for EEG Using Cycle-GAN Structure

机译:使用Cycle-GAN结构的EEG特征过滤器

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The brain-computer interface (BCI) has become one of the most important biomedical research fields and has created many useful applications. As an important component of BCI, electroencephalography (EEG) is in general sensitive to noise and rich in all kinds of information from our brain. In this paper, we introduce a new strategy to filter out unwanted features from EEG signals using GAN-based autoencoders. Filtering out signals relating to one property of the EEG signal while retaining another is similar to the way we can listen to just one voice during a party. This approach has many potential applications including in privacy and security. We use the UCI EEG dataset on alcoholism for our experiments. Our experiment results show that our novel GAN based structure can filter out alcoholism information for 66% of EEG signals with an average of only 6.2% accuracy lost.
机译:脑机接口(BCI)已成为最重要的生物医学研究领域之一,并创建了许多有用的应用程序。作为BCI的重要组成部分,脑电图(EEG)通常对噪声敏感,并且富含来自我们大脑的各种信息。在本文中,我们介绍了一种新策略,可以使用基于GAN的自动编码器从EEG信号中滤除不需要的特征。过滤掉与EEG信号的一种属性相关的信号,同时保留另一种属性,这类似于我们在聚会中只听一种声音的方式。这种方法具有许多潜在的应用程序,包括在隐私和安全性方面。我们将酒精中毒的UCI EEG数据集用于我们的实验。我们的实验结果表明,我们新颖的基于GAN的结构可以过滤掉66%的EEG信号中的酒精中毒信息,平均准确率仅损失6.2%。

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