[Fatigue feature extraction and classification algorithm of forehead single-channel electroencephalography signals].

Huizhou Yang, Yunfei Liu, Lijuan Xia
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引用次数: 0

Abstract

Aiming at the problem that the feature extraction ability of forehead single-channel electroencephalography (EEG) signals is insufficient, which leads to decreased fatigue detection accuracy, a fatigue feature extraction and classification algorithm based on supervised contrastive learning is proposed. Firstly, the raw signals are filtered by empirical modal decomposition to improve the signal-to-noise ratio. Secondly, considering the limitation of the one-dimensional signal in information expression, overlapping sampling is used to transform the signal into a two-dimensional structure, and simultaneously express the short-term and long-term changes of the signal. The feature extraction network is constructed by depthwise separable convolution to accelerate model operation. Finally, the model is globally optimized by combining the supervised contrastive loss and the mean square error loss. Experiments show that the average accuracy of the algorithm for classifying three fatigue states can reach 75.80%, which is greatly improved compared with other advanced algorithms, and the accuracy and feasibility of fatigue detection by single-channel EEG signals are significantly improved. The results provide strong support for the application of single-channel EEG signals, and also provide a new idea for fatigue detection research.

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[前额单通道脑电信号的疲劳特征提取和分类算法]。
针对前额单通道脑电图(EEG)信号特征提取能力不足,导致疲劳检测准确率下降的问题,提出了一种基于监督对比学习的疲劳特征提取和分类算法。首先,通过经验模态分解对原始信号进行滤波,以提高信噪比。其次,考虑到一维信号在信息表达上的局限性,采用重叠采样将信号转化为二维结构,同时表达信号的短期和长期变化。采用深度可分离卷积法构建特征提取网络,以加速模型运行。最后,结合监督对比损失和均方误差损失对模型进行全局优化。实验表明,该算法对三种疲劳状态分类的平均准确率可达 75.80%,与其他先进算法相比有了很大提高,单通道脑电信号疲劳检测的准确性和可行性得到了显著改善。这些结果为单通道脑电信号的应用提供了有力支持,也为疲劳检测研究提供了新思路。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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