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Deep Learning Identifies Brain Cognitive Load Via EEG Signals

机译:深度学习通过EEG信号识别大脑认知负荷

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The process of EEG signal analysis involves multi-frequency non-stationary brain waves from many channels. Appropriate segmentation of these signals, extracting discriminatory features to obtain the imperative properties, and classification are the key aspects of a pattern detection algorithm. The performance of the machine learning models is highly dependent on feature extraction and selection techniques. Identification of best possible features requires intricate domain knowledge and cumbersome exploration. To evade such dependencies, deep learning methods have evolved for EEG detection, which automatically extract the best features needed for the classification. However, the time to train such networks is substantial due to the complex structure of the model. To address these issues, the present paper proposes an automatic system for brain cognitive state detection using a simple 12-layer 1D network architecture. The developed algorithm yields ceiling level classification performance for both the experimental and the benchmark dataset.
机译:EEG信号分析的过程涉及来自许多通道的多频非静止脑波。这些信号的适当分割,提取歧视特征以获得势在必行特性,并且分类是模式检测算法的关键方面。机器学习模型的性能高度依赖于特征提取和选择技术。确定最佳特征需要复杂的域知识和繁琐的探索。为了避免这样的依赖性,深度学习方法已经演变为EEG检测,它会自动提取分类所需的最佳功能。然而,由于模型的复杂结构,培训这种网络的时间很大。为了解决这些问题,本文提出了一种使用简单的12层1D网络架构进行大脑认知状态检测的自动系统。开发算法为实验和基准数据集产生了天花板级分类性能。

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