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Deep learning denoising for EOG artifacts removal from EEG signals

机译:深度学习去噪从EEG信号中移除EG伪影

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There are many sources of interference encountered in the electroencephalogram (EEG) recordings, specifically ocular, muscular, and cardiac artifacts. Rejection of EEG artifacts is an essential process in EEG analysis since such artifacts cause many problems in EEG signals analysis. One of the most challenging issues in EEG denoising processes is removing the ocular artifacts where Electrooculographic (EOG), and EEG signals have an overlap in both frequency and time domains. In this paper, we build and train a deep learning model to deal with this challenge and remove the ocular artifacts effectively. In the proposed scheme, we convert each EEG signal to an image to be fed to a U-NET model, which is a deep learning model usually used in image segmentation tasks. We proposed three different schemes and made our U-NET based models learn to purify contaminated EEG signals similar to the process used in the image segmentation process. The results confirm that one of our schemes can achieve a reliable and promising accuracy to reduce the Mean square error between the target signal (Pure EEGs) and the predicted signal (Purified EEGs).
机译:脑电图(EEG)录像中遇到了许多干扰源,特别是眼,肌肉和心脏伪影。 EEG工件的拒绝是EEG分析中的重要过程,因为这种伪像在EEG信号分析中导致许多问题。 EEG去噪过程中最具挑战性的最具挑战性的问题之一是去除电划线(EOG)和EEG信号在频率和时域中具有重叠的眼伪像。在本文中,我们建立并培训深入学习模型来处理这一挑战并有效地消除眼部伪影。在所提出的方案中,我们将每个EEG信号转换为要馈送到U-Net模型的图像,这是通常用于图像分割任务的深度学习模型。我们提出了三种不同的方案,并使我们的U-Net基础模型学习净化与图像分割过程中使用的过程类似的受污染的EEG信号。结果证实,我们的其中一个方案可以实现可靠和有希望的准确性,以减少目标信号(纯EEG)和预测信号(净化EEG)之间的平均方误差。

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