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Automatic Sleep Stage Classification Using Single-Channel EEG: Learning Sequential Features with Attention-Based Recurrent Neural Networks

机译:使用单通道脑电图自动进行睡眠阶段分类:通过基于注意力的递归神经网络学习顺序特征

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We propose in this work a feature learning approach using deep bidirectional recurrent neural networks (RNNs) with attention mechanism for single-channel automatic sleep stage classification. We firstly decompose an EEG epoch into multiple small frames and subsequently transform them into a sequence of frame-wise feature vectors. Given the training sequences, the attention-based RNN is trained in a sequence-to-label fashion for sleep stage classification. Due to discriminative training, the network is expected to encode information of an input sequence into a high-level feature vector after the attention layer. We, therefore, treat the trained network as a feature extractor and extract these feature vectors for classification which is accomplished by a linear SVM classifier. We also propose a discriminative method to learn a filter bank with a DNN for preprocessing purpose. Filtering the frame-wise feature vectors with the learned filter bank beforehand leads to further improvement on the classification performance. The proposed approach demonstrates good performance on the Sleep-EDF dataset.
机译:我们在这项工作中提出了一种使用深度双向递归神经网络(RNN)和注意力机制进行单通道自动睡眠阶段分类的特征学习方法。我们首先将脑电图元分解为多个小帧,然后将它们转换为一系列逐帧特征向量。给定训练序列,基于注意力的RNN以从序列到标签的方式进行训练,以进行睡眠阶段分类。由于判别训练,期望网络将输入序列的信息编码为关注层之后的高级特征向量。因此,我们将训练后的网络视为特征提取器,并提取这些特征向量进行分类,这是通过线性SVM分类器完成的。我们还提出了一种判别方法,以学习具有DNN的滤波器组以进行预处理。预先使用学习的滤波器组对逐帧特征向量进行滤波,可以进一步提高分类性能。所提出的方法在Sleep-EDF数据集上表现出良好的性能。

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