题名

EEG FEATURE EXTRACTION AND RECOGNITION WITH DIFFERENT MENTAL STATES BASED ON WAVELET TRANSFORM AND ACCLN NETWORK

作者

Xuebin Qin;Jun Deng;Mei Wang;Pai Wang;Liang Wang;Yizhe Zhang

关键词

BCI ; recognition ; feature extraction ; ACCLN network

期刊名称

技術學刊

卷期/出版年月

32卷4期(2017 / 12 / 01)

页次

261 - 274

内容语文

英文

中文摘要

The electroencephalogram (EEG) is a record of brain activity. Brain Computer Interface (BCI) technology has become one of the hotspots, especially for the identification of EEG characteristic signals. We here describe a novel method which involves the combination of discrete wavelet transformation and neural network to recognize different states of the human brain, including fatigue, consciousness and concentration from EEG signal. To eliminate the high frequency noise, raw signal was preprocessed by the wavelet denoising method and was then decomposed into multi-layer high frequency signal and low frequency signal. Thus, δ wave, θ wave, α wave, β wave were obtained by wavelet transformation. In this experiment, the frequency band energy of the different waves was regarded as the feature signal of EEG for further signal processing. The feature signal was then classified by both radial basis function (RBF) and annealed chaotic competitive learning network (ACCLN). The experimental results showed that the average accuracy of ACCLN network is 98.4%, which is much higher than the traditional method. The results together showed the effectiveness and feasibility of the proposed method. The proposed algorithm has a good practical value in the analysis of the mental states of a driver or high risk operation personnel.

主题分类 工程學 > 工程學綜合
参考文献
  1. Atsalakis, G.,Skiadas, C.,Nezis, D.(2008).Forecasting Chaotic Time Series by a Neural Network.Proceedings of the 8th International Conference in Chaotic Modeling and Simulation, Vilnius, Lithuania, 30 June-3 July
  2. Atsalakis, G.,Tsakalaki, K.(2012).Simulating Annealing and Neural Networks for Chaotic Time Series Forecasting.Chaotic Modeling and Simulation,1,81-90.
  3. Correa, A. G.,Orosco, L.,Laciar, E.(2014).Automatic Detection of Drowsiness in EEG Records Based on Multimodal Analysis.Medical Engineering & Physics,36(2),244-249.
  4. Güler, N. F.,Übeyli, E. D.,Güler, İ.(2005).Recurrent Neural Networks Employing Lyapunov Exponents for EEG Signals Classification.Expert Systems with Applications,29(3),506-514.
  5. Hamaneh, M. B.,Chitravas, N.,Kaiboriboon, K.,Lhatoo, S. D.,Loparo, K. A.(2014).Automated Removal of EKG Artifact from EEG Data Using Independent Component Analysis and Continuous Wavelet Transformation.IEEE Transactions on Biomedical Engineering,61(6),1634-1641.
  6. Higashi, H.,Tanaka, T.(2013).Simultaneous Design of FIR Filter Banks and Spatial Patterns for EEG Signal Classification.IEEE Transactions on Biomedical Engineering,60(4),1100-1110.
  7. Huang, K. C.,Huang, T. Y.,Chuang, C. H.,King, J. T.,Wang, Y. K.,Lin, C. T.,Jung, T. P.(2016).An EEG-based Fatigue Detection and Mitigation System.International Journal of Neural Systems,26(4),1788-1795.
  8. Jap, B. T.,Lal, S.,Fischer, P.,Bekiaris, E.(2009).Using EEG Spectral Components to Assess Algorithms for Detecting Fatigue.Expert Systems with Applications,36(2),2352-2359.
  9. Kala, R.,Vazirani, H.,Khanwalkar, N.,Bhattacharya, M.(2010).Evolutionary Radial Basis Function Network for Classificatory Problems.International Journal of Computer Science and Applications,7(4),34-49.
  10. Kus, R.,Valbuena, D.,Zygierewicz, J.,Malechka, T.,Graeser, A.,Durka, P.(2012).Asynchronous BCI Based on Motor Imagery with Automated Calibration and Neurofeedback Training.IEEE Transactions on Neural Systems and Rehabilitation Engineering,20(6),823-835.
  11. Li, X.,Chen, X.,Yan, Y.,Wei, W.,Wang, Z. J.(2014).Classification of EEG Signals Using a Multiple Kernel Learning Support Vector Machine.Sensors,14(7),12784-12802.
  12. Lin, J. S.(2001).Annealed Chaotic Neural Network with Nonlinear Self-feedback and Its Application to Clustering Problem.Pattern Recognition,34(5),1093-1104.
  13. Liu, H.,Li, S.(2013).Decision Fusion of Sparse Representation and Support Vector Machine for SAR Image Target Recognition.Neurocomputing,113,97-104.
  14. Liu, Ying,Moser, J.,Aviyente, S.(2014).Network Community Structure Detection for Directional Neural Networks Inferred from Multichannel Multisubject EEG Data.IEEE Transactions on Biomedical Engineering,61(7),1919-1930.
  15. Lopar, M.,Ribarić, S.(2013).An Overview and Evaluation of Various Face and Eyes Detection Algorithms for Driver Fatigue Monitoring Systems.Proceedings of the Croatian Computer Vision Workshop, Zagreb, Croatia, 19 September 2013
  16. Lopez-Gordo, M. A.,Pelayo, F.,Fernandez, E.,Padilla, P.(2015).Phase-shift Keying of EEG Signals: Application to Detect Attention in Multitalker Scenarios.Signal Processing,117,165-173.
  17. McMullen, D. P.,Hotson, G.,Katyal, K. D.,Wester, B. A.,Fifer, M. S.,McGee, T. G.,Harris, A.(2014).Demonstration of a Semi-autonomous Hybrid Brain-Machine Interface Using Human Intracranial EEG, Eye Tracking, and Computer Vision to Control a Robotic Upper Limb Prosthetic.IEEE Transactions on Neural Systems and Rehabilitation Engineering,22(4),784-796.
  18. Musha, T.,Matsuzaki, H.,Kobayashi, Y.,Okamoto, Y.,Tanaka, M.,Asada, T.(2013).EEG Markers for Characterizing Anomalous Activities of Cerebral Neurons in NAT (Neuronal Activity Topography) Method.IEEE Transactions on Biomedical Engineering,60(8),2332-2338.
  19. Nathan, V.,Jafari, R.(2014).Reducing the Noise Level of EEG Signal Acquisition Through Reconfiguration of Dry Contact Electrodes.IEEE Proceedings of Biomedical Circuits and Systems Conference, Lausanne, Switzerland, 22-24 October 2014
  20. NeuroSky®(2011).NeuroSky®. 2011. "Product technical description of MindWave Mobile.".
  21. Sadati, N.,Mohseni, H. R.,Magshoudi, A.(2006).Epileptic Seizure Detection Using Neural Fuzzy Networks.IEEE Proceedings of International Conference on Fuzzy Systems, Vancouver, BC, Canada, 16-21 July 2006
  22. Sivasankari, K.,Thanushkodi, K.(2014).An Improved EEG Signal Classification Using Neural Network with the Consequence of ICA and STFT.Journal of Electrical Engineering & Technology,9(3),1060-1071.
  23. Sivasankari, N.,Thanushkodi, K.(2009).Automated Epileptic Seizure Detection in EEG Signals Using FastICA and Neural Network.International Journal of Advances in Soft Computing & Its Applications,1(2),1-14.
  24. Tomita, Y.,Vialatte, F. B.,Dreyfus, G.,Mitsukura, Y.,Bakardjian, H.,Cichocki, A.(2014).Bimodal BCI Using Simultaneously NIRS and EEG.IEEE Transactions on Biomedical Engineering,61(4),1274-1284.
  25. Tzallas, A. T.,Tsipouras, M. G.,Fotiadis, D. I.(2009).Epileptic Seizure Detection in EEGs Using Time-Frequency Analysis.IEEE Transactions on Information Technology in Biomedicine,13(5),703-710.
  26. Volosyak, I.,Valbuena, D.,Luth, T.,Malechka, T.,Graser, A.(2011).BCI Demographics II: How Many (and What Kinds of) People Can Use a High-frequency SSVEP BCI?.IEEE Transactions on Neural Systems and Rehabilitation Engineering,19(3),232-239.
  27. Yu, T.,Yu, Z.,Gu, Z.,Li, Y.(2015).Grouped Automatic Relevance Determination and Its Application in Channel Selection for P300 BCIs.IEEE Transactions on Neural Systems and Rehabilitation Engineering,23(6),1068-1077.
  28. Zhang, A.,Chen, Y.(2012).EEG Feature Extraction and Analysis Under Drowsy State Based on Energy and Sample Entropy.Proceedings of IEEE International Conference on Biomedical Engineering and Informatics, edited by Q. Chen, J. Huan, Y. Xu, T. Zhang, and L. Wang, Chongqing, China, 16-18 October 2012
  29. Zhang, J. M.,Liang, S.(2011).Research on Fault Location of Power Cable with Wavelet Analysis.Proceedings of Second International Conference on Digital Manufacturing and Automation (ICDMA), Hunan, China, 5-7 August 2011
  30. Zhang, Z.,Zhang, J.(2010).A New Real-time Eye Tracking Based on Nonlinear Unscented Kalman Filter for Monitoring Driver Fatigue.Journal of Control Theory and Applications,8(2),181-188.
  31. Zrenner, C.,Tünnerhoff, J.,Zipser, C.,Müller-Dahlhaus, F.,Ziemann, U.(2015).Brain-state Dependent Brain Stimulation: Real-time EEG Alpha Band Analysis Using Sliding Window FFT Phase Progression Extrapolation to Trigger an Alpha Phase Locked TMS Pulse with 1 Millisecond Accuracy.Brain Stimulation: Basic, Translational, and Clinical Research in Neuromodulation,8(2),378-379.