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Improving EEG-Based Driver Fatigue Classification Using Sparse-Deep Belief Networks

机译:使用稀疏-深信度网络改善基于EEG的驾驶员疲劳分类

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摘要

This paper presents an improvement of classification performance for electroencephalography (EEG)-based driver fatigue classification between fatigue and alert states with the data collected from 43 participants. The system employs autoregressive (AR) modeling as the features extraction algorithm, and sparse-deep belief networks (sparse-DBN) as the classification algorithm. Compared to other classifiers, sparse-DBN is a semi supervised learning method which combines unsupervised learning for modeling features in the pre-training layer and supervised learning for classification in the following layer. The sparsity in sparse-DBN is achieved with a regularization term that penalizes a deviation of the expected activation of hidden units from a fixed low-level prevents the network from overfitting and is able to learn low-level structures as well as high-level structures. For comparison, the artificial neural networks (ANN), Bayesian neural networks (BNN), and original deep belief networks (DBN) classifiers are used. The classification results show that using AR feature extractor and DBN classifiers, the classification performance achieves an improved classification performance with a of sensitivity of 90.8%, a specificity of 90.4%, an accuracy of 90.6%, and an area under the receiver operating curve (AUROC) of 0.94 compared to ANN (sensitivity at 80.8%, specificity at 77.8%, accuracy at 79.3% with AUC-ROC of 0.83) and BNN classifiers (sensitivity at 84.3%, specificity at 83%, accuracy at 83.6% with AUROC of 0.87). Using the sparse-DBN classifier, the classification performance improved further with sensitivity of 93.9%, a specificity of 92.3%, and an accuracy of 93.1% with AUROC of 0.96. Overall, the sparse-DBN classifier improved accuracy by 13.8, 9.5, and 2.5% over ANN, BNN, and DBN classifiers, respectively.
机译:本文提出了基于脑电图(EEG)的疲劳和警报状态之间的驾驶员疲劳分类的分类性能的改进,并从43位参与者中收集了数据。该系统采用自回归(AR)建模作为特征提取算法,并采用稀疏-深度置信网络(sparse-DBN)作为分类算法。与其他分类器相比,稀疏DBN是一种半监督学习方法,它将预训练层中用于建模特征的无监督学习与下一层中用于分类的监督学习相结合。稀疏DBN的稀疏性是通过一个正规化术语来实现的,该术语惩罚隐藏单元的预期激活与固定低层的偏离,从而防止网络过度拟合,并且能够学习低层结构和高层结构。为了进行比较,使用了人工神经网络(ANN),贝叶斯神经网络(BNN)和原始深度信念网络(DBN)分类器。分类结果表明,使用AR特征提取器和DBN分类器,分类性能达到了改进的分类性能,灵敏度为90.8%,特异性为90.4%,准确度为90.6%,并且接收器工作曲线下的面积( AUROC)为0.94,而ANN(灵敏度为80.8%,特异性为77.8%,准确度为79.3%,AUC-ROC为0.83)和BNN分类器(灵敏度为84.3%,特异性为83%,准确度为83.6%,AUROC为0.87)。使用稀疏DBN分类器,分类性能进一步提高,灵敏度为93.9%,特异性为92.3%,AUROC为0.96时准确性为93.1%。总体而言,与ANN,BNN和DBN分类器相比,稀疏DBN分类器的准确性分别提高了13.8、9.5和2.5%。

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