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Multimodal deep learning approach for joint EEG-EMG data compression and classification

机译:联合EEG-EEG-EEG-EGG数据压缩和分类的多模式深度学习方法

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In this paper, we present a joint compression and classification approach of EEG and EMG signals using a deep learning approach. Specifically, we build our system based on the deep autoencoder architecture which is designed not only to extract discriminant features in the multimodal data representation but also to reconstruct the data from the latent representation using encoder-decoder layers. Since autoencoder can be seen as a compression approach, we extend it to handle multimodal data at the encoder layer, reconstructed and retrieved at the decoder layer. We show through experimental results, that exploiting both multimodal data intercorellation and intracorellation 1) Significantly reduces signal distortion particularly for high compression levels 2) Achieves better accuracy in classifying EEG and EMG signals recorded and labeled according to the sentiments of the volunteer.
机译:在本文中,我们使用深度学习方法提出了EEG和EP信号的关节压缩和分类方法。 具体而言,我们基于深度自动统计器体系结构构建我们的系统,该系统不仅设计用于提取多模式数据表示中的判别特征,而且还设计用于使用编码器解码器层重建来自潜在表示的数据。 由于AutoEncoder可以被视为压缩方法,因此我们将其扩展以处理编码器层的多模式数据,在解码器层中重建和检索。 我们通过实验结果表明,利用多模式数据型号和肠内形成1)显着降低了尤其是对于高压缩电平2)的信号变形,而是在志愿者的情绪记录和标记的分类和标记的脑电图和标记的分类中实现了更好的准确性。

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