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Optimal EEG Feature Extraction using DWT for Classification of Imagination of Hands Movement

  • Chum, Pharino (Chung-Ang University, School of Electrical and Electronics Engineering) ;
  • Park, Seung-Min (Chung-Ang University, School of Electrical and Electronics Engineering) ;
  • Ko, Kwang-Eun (Chung-Ang University, School of Electrical and Electronics Engineering) ;
  • Sim, Kwee-Bo (Chung-Ang University, School of Electrical and Electronics Engineering)
  • Received : 2011.11.19
  • Accepted : 2011.12.12
  • Published : 2011.12.25

Abstract

An optimal feature selection and extraction procedure is an important task that significantly affects the success of brain activity analysis in brain-computer interface (BCI) research area. In this paper, a novel method for extracting the optimal feature from electroencephalogram (EEG) signal is proposed. At first, a student's-t-statistic method is used to normalize and to minimize statistical error between EEG measurements. And, 2D time-frequency data set from the raw EEG signal was extracted using discrete wavelet transform (DWT) as a raw feature, standard deviations and mean of 2D time-frequency matrix were extracted as a optimal EEG feature vector along with other basis feature of sub-band signals. In the experiment, data set 1 of BCI competition IV are used and classification using SVM to prove strength of our new method.

Keywords

References

  1. J.R. Wolpaw, N. Birbaumer, D.J. McFarland, G. Pfurtscheller, T.M. Vaughan, "Brain-computer interfaces for communications and control," In Clinical Neurophysiology, vol. 113, pp. 767-791, 2002. https://doi.org/10.1016/S1388-2457(02)00057-3
  2. J.R. Wolpaw, N. Birbaumer, D.J. McFarland, G. Pfurtscheller, T.M. Vaughan, "Brain-computer interfaces for communications and control," In Clinical Neurophysiology, vol. 113, pp. 767-791, 2002. https://doi.org/10.1016/S1388-2457(02)00057-3
  3. P.S. Addison, "Wavelet transform and the ECG: a review," In Physiological Measurement, vol 26, no. 5, pp. R155-R199, 2005. https://doi.org/10.1088/0967-3334/26/5/R01
  4. J.S. Vincent, B. Ajit , R. Raghuveer, S. Kenneth, "Wavelet Analysis of Neuroelectric Waveforms: A conceptual Tutorial," In Brain and Language, vol. 66, issue 1, pp. 7-60, 1999. https://doi.org/10.1006/brln.1998.2024
  5. H.B. Kekre, K. Patil, "Standard Deviation of Mean and Variance of Rows and Columns of Images for CBIR," In International Journal of Computer and Information Engineering, 2009.
  6. B. Vladimir, "BCI Competition 2003-Data Sets Ib and IIb: Feature Extraction Event-Related Brain Potentials With the Continuous Wavelet Transform and the t-Value Scalogram," In IEEE Transaction on Biomedical Enginerring, vol. 51, no. 6, 2004.
  7. S. Bhattacharyya, A. Khasnobish, A. Konar, D.N. Tibarrewala, A.K. Naga, "Performance Analysis of Left/Right Hand Movement Classification from EEG Signal by Intelligent Algorithms," In Computational Intelligence, Cognitive Algorithms, Mind, and Brain(CCMB, 2011 IEEE Symposium), 2011.
  8. A.J. Perez-Jimenez and J.C. Perez-Cortes, "Genetic Algorithm for Linear Feature Extraction," Proceedings on Vision System-Segmentation and Pattern Recognition, pp. 423-436, 2007.
  9. J.R. Wolpaw, N. Birbaumer, W.J. Heetderks, D.J. McFarland, P.H. Peckham, G. Schalk, E. Donchin, L.A. Quatrano, C.J. Robinson, T.M. Vaughan, "Brain-computer interface technology: a review of the first international meeting," In Rehabilitation Engineering, IEEE Transactions, vol. 8, no. 2, 2000.
  10. H.N. Jeremy, L. Thomas, S. Michael, H. Thilo, W. Guido, E. Christain, S. Bernhard, B. Niels, "Classifying Event-Related Desynchronization in EEG, ECoG and MEG signals," In Towards Brain-Computer Interfacing, vol. 4174, pp. 404-413, 2006.
  11. F. Lotte, M. Congedo, A. Lecuyer, F. Lamarhe, B. Arnaldi, "A review of classification algorithms for EEG-based brain-computer interfaces," In Journal of Neural Engineering 4, pp. R1-R13, 2007. https://doi.org/10.1088/1741-2560/4/2/R01