基于脑电图的睡眠阶段分类的多子带和多子波段时间序列特征学习

Panfeng An, Zhiyong Yuan, Jianhui Zhao, Xue Jiang, Zengmao Wang, Bo Du
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引用次数: 0

摘要

脑电图在分析和识别大脑活动方面发挥着重要的作用,在生物识别领域具有很大的潜力,但基于脑电图的时间序列分类由于其非平稳特征和个体差异而复杂而困难。本文研究了脑电信号的分类问题,提出了一种多子带、多子区间时间序列特征学习(MMTSFL)的睡眠阶段自动分类方法。MMTSFL首先对原始脑电信号进行不同频率的子带分解,并将得到的子带划分为多个连续的子带,然后利用时间序列特征学习得到有效的判别特征。此外,从每个子波中提取基于幅值时间的信号特征来表征脑电信号的动态变化,MMTSFL同时对特定特征、一致性特征和时间特征进行多目的特征学习。在睡眠质量评价、疲劳检测和睡眠疾病诊断三个分类任务上的实验结果表明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-subband and Multi-subepoch Time Series Feature Learning for EEG-based Sleep Stage Classification
EEG plays an important role in the analysis and recognition of brain activity, and which has great potential in the field of biometrics, while EEG-based time series classification is complicated and difficult due to the nonstationary characteristics and individual difference. In this paper, we investigate the EEG signal classification problem and propose a multi-subband and multi-subepoch time series feature learning (MMTSFL) method for automatic sleep stage classification. Specifically, MMTSFL first decomposes multiple subbands with various frequency from raw EEG signals and partitions the obtained subbands in-to multiple consecutive subepochs, and then employs time series feature learning to obtain effective discriminant features. Moreover, amplitude-time based signal features are extracted from each subepoch to represent dynamic variation of EEG signals, and MMTSFL conduct further multipurpose feature learning for specific features, consistent features and temporal features simultaneously. Experiment results on three classification tasks of sleep quality evaluation, fatigue detection and sleep disease diagnosis demonstrate the superiority of the proposed method.
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