会议专题

Driving Fatigue Detection Based on EEG Signal

  Driving fatigue detection is an important approach to ensure the traffic safety.However,the most existing mature analysis methods are based on driving behavior or drivers body characteristics,which leads to the low accuracy and predictability.The EEG signal analysis is proved to an effective way to reflect the fatigue state in medical science,thus this paper explores the EEG signal to detect the driving fatigue.We design a portable EEG acquisition system,which detects the drivers EEG signals and handles the interference by the median filter,band stop filter and Hilbert-Huang transform.The eigenvalues are extracted by percentage power spectral density.Two methods are proposed to determine the fatigue levels.Experiment results show that the method based on eigenvalue ratio in eyes-open state has 79% accuracy,the method based on BP neural network in fatigue classification has 83% accuracy,and the eyes-close state recognition rate is more than 97%.

driving fatigue EEG acquisition interference process BP neural network

Yuan Wang Yan Zhang Dan Liu Xin Liu Zheng Zhu Jinwei Sun

School of Electrical Engineering and Automation, Harbin Institute of Technology Harbin, China School of Transportation Science and Engineering, Harbin Institute of Technology Harbin, China

国际会议

2015 Fifth International Conference on Instrumentation and Measurement,Computer,Communication and Control (IMCCC2015)(第五届仪器测量、计算机通信与控制国际会议)

秦皇岛

英文

715-718

2015-09-18(万方平台首次上网日期,不代表论文的发表时间)