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Driver Fatigue Prediction Using EEG for Autonomous Vehicle

机译:使用脑电图自主车辆的驾驶员疲劳预测

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摘要

In this paper, we propose a method to predict the eye state (opened or closed) by using measured electroencephalography signals which are processed using principal component analysis and support vector machine. These signals are used to predict the driver fatigue from his eye stateso that during emergency the system would automatically change the driving mode form manual mode of driving to autonomous mode of driving. The signals from 14 electrodes are recorded using a commercial OpenBCI system along with a custom headset for recording the brain activity data and a videois recorded which is used for manually tagging eye state of the driver during simulated driving. This data was used to test the performance for classifying eye state using several types of support vector machines. The best performing classifier was found to be fine Gaussian support vectormachine with a performance of 81.2% for classifying eye state and the system changes the driving mode of vehicle from manual to autonomous mode. The system can be further developed to track eye state for real time applications.
机译:在本文中,我们提出了一种通过使用使用主成分分析和支持向量机进行处理的测量的脑电图信号来预测眼睛状态(打开或闭合)的方法。这些信号用于预测他的眼睛标准中的驾驶员疲劳,在紧急情况下,系统将自动改变驱动模式表单手动驱动的手动模式到自主驱动模式。使用商业OpperBCI系统记录来自14个电极的信号以及用于记录大脑活动数据的自定义耳机和记录的扫描,其用于在模拟驱动期间手动标记驱动器的眼睛状态。该数据用于测试使用几种类型的支持向量机进行分类眼睛状态的性能。发现最佳的执行分类器是精细高斯支持Vectormachine,性能为81.2%,用于分类眼状态,系统将车辆的驱动模式从手动变为自主模式。可以进一步开发系统以跟踪实时应用的眼睛状态。

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