首页> 外文期刊>Frontiers in Neuroscience >Pattern Recognition of Momentary Mental Workload Based on Multi-Channel Electrophysiological Data and Ensemble Convolutional Neural Networks
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Pattern Recognition of Momentary Mental Workload Based on Multi-Channel Electrophysiological Data and Ensemble Convolutional Neural Networks

机译:基于多通道电生理数据和集成卷积神经网络的瞬间心理工作量模式识别

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In this paper, we deal with the Mental Workload (MWL) classification problem based on the measured physiological data. First we discussed the optimal depth (i.e., the number of hidden layers) and parameter optimization algorithms for the Convolutional Neural Networks (CNN). The base CNNs designed were tested according to five classification performance indices, namely Accuracy, Precision, F-measure, G-mean, and required training time. Then we developed an Ensemble Convolutional Neural Network (ECNN) to enhance the accuracy and robustness of the individual CNN model. For the ECNN design, three model aggregation approaches (weighted averaging, majority voting and stacking) were examined and a resampling strategy was used to enhance the diversity of individual CNN models. The results of MWL classification performance comparison indicated that the proposed ECNN framework can effectively improve MWL classification performance and is featured by entirely automatic feature extraction and MWL classification, when compared with traditional machine learning methods.
机译:在本文中,我们根据测得的生理数据处理心理工作量(MWL)分类问题。首先,我们讨论了卷积神经网络(CNN)的最佳深度(即隐藏层数)和参数优化算法。根据五个分类性能指标(即准确性,精度,F量度,G均值和所需的训练时间)对设计的基本CNN进行了测试。然后,我们开发了集成卷积神经网络(ECNN),以增强单个CNN模型的准确性和鲁棒性。对于ECNN设计,检查了三种模型聚合方法(加权平均,多数表决和堆叠),并使用了重采样策略来增强各个CNN模型的多样性。 MWL分类性能比较的结果表明,与传统的机器学习方法相比,提出的ECNN框架可以有效地提高MWL分类性能,具有全自动特征提取和MWL分类的特点。

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