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A Regression Method With Subnetwork Neurons for Vigilance Estimation Using EOG and EEG

机译:使用EOG和EEG的警惕估计的子网神经元的回归方法

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摘要

In recent years, it has been observed that there is an increasing rate of road accidents due to the low vigilance of drivers. Thus, the estimation of drivers' vigilance state plays a significant role in public transportation safety. We have adopted a feature fusion strategy that combines the electroencephalogram (EEG) signals collected from various sites of the human brain, including forehead, temporal, and posterior and forehead electrooculogram (forehead-EOG) signals, to address this factor. The level of vigilance is predicted through a new learning model known as double-layered neural network with subnetwork nodes (DNNSNs), which comprises several subnetwork nodes, and each node in turn is composed of many hidden nodes that have various capabilities of feature selection (dimension reduced), feature learning, etc. The proposed single modality that uses only forehead-EOG signal exhibits a mean root-mean-square error (RMSE) of 0.12 and a mean Pearson product-moment correlation coefficient (COR) of 0.78. On one hand, an EEG signal achieved a mean RMSE of 0.13 and a mean COR of 0.72. Whereas, on the other, the proposed multimodality achieved values of 0.09 and 0.85 for the mean RMSE and the mean COR, respectively. Experimental results show that the proposed DNNSN with multimodality fusion outperforms the model with single modality for vigilance estimation due to the complementary information between forehead-EOG and EEG. After a favorable learning rate was applied to the input layer, the mean RMSE/COR improved to 0.11/0.79, 0.12/0.74, and 0.08/0.86, respectively. Hence, this quantitative analysis proves that the proposed method provides better feasibility and efficiency learning capability and surmounts other state-of-the-art techniques.
机译:近年来,已经观察到由于司机的警惕性低,因此道路事故率增加。因此,司机警惕状态的估计在公共交通安全中发挥着重要作用。我们采用了一种特征融合策略,该策略结合了从人脑的各个部位收集的脑电图(EEG)信号,包括前额,时间和前额和前额电依屈(前额和前额电帘线(前额 - EOG)信号来解决该因素。通过称为双层神经网络的新学习模型来预测警惕水平,其中包括多个子网节点(Dnnsns),其包括多个子网节点,并且每个节点又由许多具有各种功能选择能力的隐藏节点组成(尺寸减小),特征学习等。所提出的单个模态,仅使用前额外EOG信号表现出0.12的平均根均方误差(RMSE)和0.78的平均PEARSON产品矩相关系数(COR)。一方面,EEG信号达到0.13的平均RMSE和0.72的平均圆形。然而,在另一方面,对于平均RMSE和平均COR,所提出的多重性能达到0.09和0.85的值。实验结果表明,由于额头与Eog和EEG之间的互补信息,所提出的具有多模融合的DNNSN具有针对警觉估计的单个模态的模型。在对输入层施加有利的学习速率之后,平均RMSE / COR分别改善为0.11 / 0.79,0.12 / 0.74和0.08 / 0.86。因此,这种定量分析证明,该方法提供了更好的可行性和效率学习能力和超越了其他最先进的技术。

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    Hunan Univ Coll Elect & Informat Engn Changsha 410082 Peoples R China|Hunan Univ State Key Lab Adv Design & Mfg Vehicle Body Changsha 410082 Peoples R China|Hunan Univ Hunan Key Lab Intelligent Robot Technol Elect Mfg Changsha 410082 Peoples R China;

    Univ Windsor Dept Elect & Comp Engn Windsor ON N9B 3P4 Canada;

    Hunan Univ Coll Elect & Informat Engn Changsha 410082 Peoples R China|Hunan Univ State Key Lab Adv Design & Mfg Vehicle Body Changsha 410082 Peoples R China|Hunan Univ Hunan Key Lab Intelligent Robot Technol Elect Mfg Changsha 410082 Peoples R China;

    Lakehead Univ Comp Sci Dept Thunder Bay ON P7B 5E1 Canada;

    Hunan Univ Coll Elect & Informat Engn Changsha 410082 Peoples R China|Hunan Univ State Key Lab Adv Design & Mfg Vehicle Body Changsha 410082 Peoples R China|Hunan Univ Hunan Key Lab Intelligent Robot Technol Elect Mfg Changsha 410082 Peoples R China;

    Shanghai Jiao Tong Univ Dept Comp Sci & Engn Shanghai 200240 Peoples R China|Shanghai Jiao Tong Univ Key Lab Shanghai Educ Commiss Intelligent Interac Shanghai 200240 Peoples R China;

    Shanghai Jiao Tong Univ Dept Comp Sci & Engn Shanghai 200240 Peoples R China|Shanghai Jiao Tong Univ Key Lab Shanghai Educ Commiss Intelligent Interac Shanghai 200240 Peoples R China;

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  • 正文语种 eng
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  • 关键词

    Electroencephalography; Estimation; Feature extraction; Brain modeling; Sleep; Electrooculography; Physiology; Electroencephalogram (EEG); feedforward neural network; forehead electrooculogram (forehead-EOG); learning rate; vigilance estimation;

    机译:脑电图;估计;特征提取;脑建模;睡眠;电胶;生理学;脑电图(EEG);前馈神经网络;前额电依屈(额头);学习率;警惕估计;

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