Mental Tasks EEG Signal Classification Using Support Vector Machine

Wahyu Caesarendra, Syahara U. Lekson, Muhammad Agung

Abstract


This paper presents a result of electroencephalography (EEG) signal classification for mental tasks such as thinking forward, backward, left, and right. The EEG data in this study were recorded from Emotive device with 14 channels and 2 references. The aim of this study is to identify the most sensitive channels to the mental task classification. Prior to feature extraction, the EEG signal were decomposed using wavelet with three level decomposition. Eighteen features were extracted from the processed data. Principal component analysis (PCA) is then used to reduce 18 features into 3 principal components. The principal component were classified using support vector machine (SVM). The results show that the SVM classification accuracy of 75%.


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References


Boostani, R. & Moradi, M.H. (2003). ”Evaluation of the forearm EMG signal features for the control of a prosthetic hand”. Physiol. Meas., vol.24(2), pp. 309–319, March 2003.

Caesarendra, W., Kosasih, B., Tieu, K. & Moodie, C.A.S. (2013). “An application of nonlinear feature extraction – A case study for low speed slewing bearing condition monitoring and prognosis”. Proc. of IEEE/ASME International Conf. On Advanved Intelligent Mechatronics, Wollongong, Australia, pp.1713-1718, 2013.

Caesarendra, W., Ariyanto, M., Lekson, S.U. & Pasmanasari, E.D. (2015). “EEG based Pattern Recognition Method for Classification of Four Mental Tasking”. Proc. of IEEE International Confrence on Automation, Cognitive Science, Optics, Micro Electro Mechanical System, and Information Technology 2015, Bandung, Indonesia.

Dubechies, I. (1992). “Ten lectures of wavelets”. Philadelphia: the Society for Industrial and Applied Mathematics 1992, pp. 7-10.

Garrett, D., Peterson, D.A., Anderson, C.W. & Thaut, M.H. (2003). “Comparison of Linear, Nonlinear, and Feature Selection Methods for EEG Signal Classification”, IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol. 11, no. 2, pp 141-144 June 2003.

Kim, K.S., Choi, H.H., Moon, C.S. & Mun, C.W. (2011). ”Comparison of k nearest neighbor, quadratic discriminant and linear discriminant analysis in classification of electromyogram signals based on the wrist-motion directions”. Current Applied Physics, vol.11(3), pp. 740– 745, November 2011.

Oskoei, M.A. & Hu, H. (2008). “Support vector machine based classification scheme for myoelectric control applied to upper limb”. IEEE Trans.Biomed. Eng., vol. 55(8), pp. 1956–1965, August 2008.

Park, S.H. & Lee, S.P. (1990). ”EMG pattern recognition based on artificial intelligence techniques”. IEEE Trans. Rehabil. Eng., vol. 6, no.4, pp. 400– 405, 1998.

Phinyomark, A., Limsakul, C. & Phukpattaranont, P. (2009). “A novel feature extraction for robust EMG pattern recognition”. J. Comput, vol. 1(1), pp.71–80, Desember 2009.

Rangayyan, R.M. (2001). “Biomedical Signal Analysis : Case-Study Approach”. IEEE Press series on Biomedical Engineering, Wiley , New York, 2002.

Soemitro, R.A.A. & Suprayitno, H. (2018). “Pemikiran Awal tentang Konsep Dasar Manajemen Aset Fasilitas”. Jurnal Manajemen Aset Infrastruktur & Fasilitas, Vol. 2, Sup. 1, Juni 2018, Hal. : 1-13.

Subas, A. (2010). “EEG signal classification using PCA, ICA, LDA and support vector machines”. Expert Systems with Application, December 2010.

Tkach, D., Huang, H. & Kuiken, T. (2010). “A Study of stability of time-domain features for electromyographic pattern recognition” J. Neuroeng. Rehabil., vol. 7(21), 2010.

https://emotiv.com/forum/forum4/topic1232/messages/ Accessed on March 2, 2016.

Tsai, K.H., Yeh, C.Y. & Lo H.C. (2008). “A novel design and clinical evaluation of a wheelchair for stroke patients”. Int. J. Ind. Ergon., vol 38(3), pp. 264-71, April 2008.

Turnip, A., Soetraprawata, D., Turnip, M., and Joelianto, E. (2016). “EEG-Based Brain-Controlled Wheelchair with Four Different Stimuli Frequencies”. Internetworking Indonesia Journal, vol.8, no. 1, 2016.

Turnip, A., Soetraprawata, D., and Kusumandari, D. E. (2013). "A Comparison of EEG Processing Methods to Improve the Performance of BCI”. International Journal of Signal Processing Systems, vol. 1, No. 1, 2013.

Zardoshti-Kermani, M., Wheeler, B.C., Badie, K. & Hashemi, R.M. (1995). “EMG feature evaluation for movement control of upper extren mity prostheses”. IEEE Trans. Rehabil. Eng.., vol. 3, pp. 324–333, Desember 1995.




DOI: http://dx.doi.org/10.12962/jifam.v1i1.5231

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