An Innovative Method for Brain State Classification from EEG Data using Hybrid Learning Algorithm

Nithiya*, Sabarinathan E.**, E. Manoj***
* Department of Embedded System Technologies, K.S.R. College of Engineering, (Autonomous), Tamil Nadu, India.
** Lecturer, Department of Electrical and Electronics Engineering, C.M.S. Group of Institutions, Tamil Nadu, India.
*** UG Scholar, Department of Electrical and Electronics Engineering, Coimbatore Institute of Technology (Autonomous), Tamil Nadu, India.
Periodicity:December - February'2017
DOI : https://doi.org/10.26634/jpr.3.4.13538

Abstract

In biomedical signal analysis, classification plays an important role and gives the promising solution to the electroencephalogram (EEG) analysis. An automatic EEG signal classification is proposed in this system and contribution of the diagnostician is replaced by using the soft computing techniques, since the manual classifications carried out in the clinical analysis is a time consuming task. In the proposed methodology, the EEG features are extracted from the raw EEG signals which are then fed to these ANFIS classifiers. It is a sophisticated framework for the classification of the different brain states in the human brain by representing their experts based knowledge as an Adaptive Neuro Fuzzy Inference System (ANFIS). This algorithm has a capability to detect the two types of brain states, including dementia and encephalopathy. Finally, the tentative outcome of the results is expressed in terms of classification accuracy and improves execution. The analyses are demonstrated with the ANFIS algorithm to improve and enhance the performances in the MATLAB.

Keywords

EEG, BSP, ANFIS, Artifacts, Wavelet, Classifier

How to Cite this Article?

Nithya., Sabarinathan, E., and Manoj, E. (2017). An Innovative Method for Brain State Classification from EEG Data using Hybrid Learning Algorithm. i-manager’s Journal on Pattern Recognition, 3(4), 8-15. https://doi.org/10.26634/jpr.3.4.13538

References

[1]. Arciniegey, D. B., Anderson, A. C., & Filley, C. F. (2013). Behavioral Neurology and Neuropsychiatry. Cambridge university.
[2]. Dixit, A., & Majumdar, S. (2013). Comparative analysis of coiflet and daubechies wavelets using global threshold for image denoising. International Journal of Advances in Engineering & Technology, 6(5), 2247-2252.
[3]. Gandhi, T., Panigrahi, B. K., & Anand, S. (2011). A comparative study of wavelet families for EEG signal classification. Neurocomputing, 74(17), 3051-3057.
[4]. Kaushik, G., Sinha, H. P., & Dewan, L. (2014). Biomedical Signals Analysis by DWT Signal Denoising with Neural Networks. Journal of Theoretical & Applied Information Technology, 62(1), 184-198.
[5]. Lalli, G., Kalamani, D., & Manikandaprabu, N. (2013). A perspective pattern recognition using retinal nerve fibers with hybrid feature set. Life Science Journal, 10(2), 2725-2730.
[6]. Lalli, G., Kalamani, D., & Manikandaprabu, N. (2014). A New Algorithmic Feature Selection and Ranking for Pattern Recognition on Retinal Vascular Structure with Different Classifiers. Australian Journal of Basic & Applied Sciences, 8(15), 265-276.
[7]. Mathworks. Retrieved from www.mathworks.com
[8]. Nguyen, H. A. T., Musson, J., Li, F., Wang, W., Zhang, G., Xu, R., & Li, J. (2012). EOG artifact removal using a wavelet neural network. Neurocomputing, 97, 374-389.
[9]. Rafiee, J., Rafiee, M. A., Prause, N., & Schoen, M. P. (2011). Wavelet basis functions in biomedical signal processing. Expert Systems with Applications, 38(5), 6190- 6201.
[10]. Sanei, S., & Chambers, J. A. (2007). Introduction to EEG. EEG Signal Processing, 1-34.
[11]. Singh, G., & Kaushal, G. (2014). Comparative study of de-noising electroencephalogram signal using window wavelet methods. International Journal of Engineering and Technical Research, 2(7), 126-128.
[12]. Wang, X. W., Nie, D., & Lu, B. L. (2014). Emotional state classification from EEG data using machine learning approach. Neurocomputing, 129, 94-106.
[13]. Wikipedia. Retrieved from www.wikipedia.com
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