Title :
Prediction of driver´s drowsy and alert states from EEG signals with deep learning
Author :
Mehdi Hajinoroozi;Zijing Mao;Yufei Huang
Author_Institution :
Department of Electrical and Computer Engineering, University of Texas at San Antonio, One UTSA Circle, USA
Abstract :
We investigate in this paper deep learning (DL) solutions for prediction of driver´s cognitive states (drowsy or alert) using EEG data. We discussed the novel channel-wise convolutional neural network (CCNN) and CCNN-R which is a CCNN variation that uses Restricted Boltzmann Machine in order to replace the convolutional filter. We also consider bagging classifiers based on DL hidden units as an alternative to the conventional DL solutions. To test the performance of the proposed methods, a large EEG dataset from 3 studies of driver´s fatigue that includes 70 sessions from 37 subjects is assembled. All proposed methods are tested on both raw EEG and Independent Component Analysis (ICA)-transformed data for cross-session predictions. The results show that CCNN and CCNN-R outperform deep neural networks (DNN) and convolutional neural networks (CNN) as well as other non-DL algorithms and DL with raw EEG inputs achieves better performance than ICA features.
Keywords :
"Electroencephalography","Convolution","Feature extraction","Bagging","Machine learning","Backpropagation","Prediction algorithms"
Conference_Titel :
Computational Advances in Multi-Sensor Adaptive Processing (CAMSAP), 2015 IEEE 6th International Workshop on
DOI :
10.1109/CAMSAP.2015.7383844