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Deep Feature Learning and Visualization for EEG Recording Using Autoencoders

机译:使用自动编码器进行脑电图记录的深度特征学习和可视化

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摘要

In this era of deep learning and big data, the transformation of biomedical big data into recognizable patterns is an important research focus and a great challenge in bioinformatics. An important form of biomedical data is electroencephalography (EEG) signals, which are generally strongly affected by noise and there exists notable individual, environmental and device differences. In this paper, we focus on learning discriminative features from short time EEG signals. Inspired by traditional image compression techniques to learn a robust representation of an image, we introduce and compare two strategies for learning features from EEG using two specifically designed autoencoders. Channel-wise autoencoders focus on features in each channel, while Image-wise autoencoders instead learn features from the whole trial. Our results on a UC1 EEG dataset show that using both Channel-wise and Image-wise autoencoders achieve good performance for a classification problem with state of art accuracy in both within-subject and cross-subject tests. A further experiment using shared weights shows that the shared weights technique only slightly influenced learning but it reduced training time significandy.
机译:在这个深度学习和大数据时代,将生物医学大数据转变为可识别的模式是重要的研究重点,也是生物信息学面临的巨大挑战。生物医学数据的一种重要形式是脑电图(EEG)信号,该信号通常会受到噪声的强烈影响,并且存在明显的个体,环境和设备差异。在本文中,我们着重于从短时EEG信号中学习判别特征。受传统图像压缩技术的启发,学习图像的鲁棒表示,我们介绍并比较了使用两种专门设计的自动编码器从脑电图学习特征的两种策略。逐个通道的自动编码器专注于每个通道的功能,而逐个图像的自动编码器则从整个试验中学习特征。我们在UC1 EEG数据集上的结果表明,在科目内和跨科目测试中,同时使用按通道和按图像的自动编码器均能以良好的准确性解决分类问题。使用共享权重的进一步实验表明,共享权重技术仅对学习产生了轻微影响,但显着减少了训练时间。

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