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Heavy Truck Driver's Drowsiness Detection Method Using Wearable EEG Based on Convolution Neural Network

机译:基于卷积神经网络的可穿戴EEG,重型卡车驾驶员的嗜睡检测方法

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Heavy truck drivers driving trucks under the situation of drowsiness can cause serious traffic accidents. In this paper, a heavy truck driver's 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, heavy truck driver's drowsiness detection and the early warning strategy. Firstly, a homemade wearable brain computer interface (BCI) is used to monitor and collect the EEG signals in the simulation environment of drowsiness driving. Secondly, the neural networks with Inception module and improved 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 heavy truck driver is judged as drowsy. The method was tested on driving EEG data from simulated drowsiness driving. The results show that using neural network with Inception module reached 95.59% correct classification in a one second time window and using improved AlexNet module reached 94.68%. The simulation and test results demonstrate the feasibility of the proposed drowsiness detection method for heavy truck driving safety.
机译:重型卡车司机在嗜睡情况下驾驶卡车会导致严重的交通事故。在本文中,提出了一种基于卷积神经网络(CNN)的可穿戴型螺旋型(EEG)的重型卡车驾驶员的嗜睡检测方法。呈现的方法包括三个部分:使用可穿戴脑电图的数据收集,重型卡车司机的嗜睡检测和预警策略。首先,使用自制可穿戴脑电脑界面(BCI)来监测和收集跳跃驾驶仿真环境中的脑电图信号。其次,培训具有成立模块和改进的亚历尼网模块的神经网络以对EEG信号进行分类。最后,如果重型卡车司机被判定为昏昏欲睡,则会发出预警策略模块。该方法在驾驶模拟嗜睡驾驶的驾驶EEG数据上进行测试。结果表明,使用Incepion模块的神经网络在一秒窗口中达到95.59%的正确分类,并使用改进的AlexNet模块达到94.68%。仿真和测试结果表明,拟议的嗜睡检测方法对重型卡车驾驶安全性的可行性。

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