Title of article :
DE-CNN: An Improved Identity Recognition Algorithm Based on the Emotional Electroencephalography
Author/Authors :
Wang, Yingdong Informatics School of Xiamen University - Xiamen - Fujian, China , Wu, Qingfeng Informatics School of Xiamen University - Xiamen - Fujian, China , Wang, Chen Informatics School of Xiamen University - Xiamen - Fujian, China , Ruan, Qunsheng Informatics School of Xiamen University - Xiamen - Fujian, China
Abstract :
In the past few decades, identification recognition based on electroencephalography (EEG) has received extensive attention to resolve
the security problems of conventional biometric systems. In the present study, a novel EEG-based identification system with different
entropy and a continuous convolution neural network (CNN) classifier is proposed. .e performance of the proposed method is
experimentally evaluated through the emotional EEG data. .e conducted experiment shows that the proposed method approaches
the stunning accuracy (ACC) of 99.7% on average and can rapidly train and update the DE-CNN model. .en, the effects of different
emotions and the impact of different time intervals on the identification performance are investigated. Obtained results show that
different emotions affect the identification accuracy, where the negative and neutral mood EEG has a better robustness than positive
emotions. For a video signal as the EEG stimulant, it is found that the proposed method with 0–75 Hz is more robust than a single
band, while the 15–32 Hz band presents overfitting and reduces the accuracy of the cross-emotion test. It is concluded that time
interval reduces the accuracy and the 15–32 Hz band has the best compatibility in terms of the attenuation.
Keywords :
DE-CNN , Algorithm , Electroencephalography , EEG , CNN
Journal title :
Computational and Mathematical Methods in Medicine