Vehicle driver drowsiness detection method using wearable EEG based on convolution neural network

被引:0
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作者
Miankuan Zhu
Jiangfan Chen
Haobo Li
Fujian Liang
Lei Han
Zutao Zhang
机构
[1] Southwest Jiaotong University,School of Information Science and Technology
[2] Southwest Jiaotong University,School of Mechanical Engineering
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关键词
Drowsiness detection; Electroencephalographic (EEG); Convolution neural network (CNN);
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学科分类号
摘要
Vehicle drivers driving cars under the situation of drowsiness can cause serious traffic accidents. In this paper, a vehicle driver drowsiness detection method using wearable electroencephalographic (EEG) based on convolution neural network (CNN) is proposed. The presented method consists of three parts: data collection using wearable EEG, vehicle driver drowsiness detection and the early warning strategy. Firstly, a wearable brain computer interface (BCI) is used to monitor and collect the EEG signals in the simulation environment of drowsy driving and awake driving. Secondly, the neural networks with Inception module and modified AlexNet module are trained to classify the EEG signals. Finally, the early warning strategy module will function and it will sound an alarm if the vehicle driver is judged as drowsy. The method was tested on driving EEG data from simulated drowsy driving. The results show that using neural network with Inception module reached 95.59% classification accuracy based on one second time window samples and using modified AlexNet module reached 94.68%. The simulation and test results demonstrate the feasibility of the proposed drowsiness detection method for vehicle driving safety.
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页码:13965 / 13980
页数:15
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