论文标题
基于频段特征提取的嗅觉脑电图分类网络
An Olfactory EEG Signal Classification Network Based on Frequency Band Feature Extraction
论文作者
论文摘要
嗅觉诱导的脑电图(EEG)信号的分类在许多领域都显示出很大的潜力。由于EEG信号中的不同频段包含不同的信息,因此提取特定的频段以进行分类性能很重要。此外,由于脑电图信号的较大受试者间变异性,用特定于主题的信息而不是一般信息提取频带至关重要。考虑到这些,该字母的重点是通过利用特定频带的光谱域信息来对嗅觉EEG信号进行分类。在这封信中,我们基于频带特征提取提出了嗅觉EEG信号分类网络。频段发生器首先设计为通过滑动窗口技术提取频带。然后,提出了一种频带注意机制,以适应特定主题来优化频带。最后,构建了卷积神经网络(CNN),以提取空间光谱信息并预测脑电图类别。比较实验结果表明,根据分类质量和受试者间鲁棒性,所提出的方法的表现优于一系列基线方法。消融实验结果证明了所提出方法的每个组成部分的有效性。
Classification of olfactory-induced electroencephalogram (EEG) signals has shown great potential in many fields. Since different frequency bands within the EEG signals contain different information, extracting specific frequency bands for classification performance is important. Moreover, due to the large inter-subject variability of the EEG signals, extracting frequency bands with subject-specific information rather than general information is crucial. Considering these, the focus of this letter is to classify the olfactory EEG signals by exploiting the spectral-domain information of specific frequency bands. In this letter, we present an olfactory EEG signal classification network based on frequency band feature extraction. A frequency band generator is first designed to extract frequency bands via the sliding window technique. Then, a frequency band attention mechanism is proposed to optimize frequency bands for a specific subject adaptively. Last, a convolutional neural network (CNN) is constructed to extract the spatio-spectral information and predict the EEG category. Comparison experiment results reveal that the proposed method outperforms a series of baseline methods in terms of both classification quality and inter-subject robustness. Ablation experiment results demonstrate the effectiveness of each component of the proposed method.