Analysis Electroencephalogram Signals Using ANFIS and Periodogram Techniques


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Abstract


In this paper the applications the Adaptative Neuro Fuzzy Inference Systems (ANFIS), the Empirical Mode Decomposition (EMD) and Discrete Wavelet Distribution (DWT) are used.  An electroencephalogram (EEG) is a diagnostic test which measures the electrical activity of the brain using highly sensitive recording equipment attached to the scalp by fine electrodes. An EEG recording is often affected with noises. These noises strongly affect the visual analysis of EEG. To overcome this problem the denoising techniques as ANFIS, EMD and DWT are applied.  The efficiency of the ANFIS, EMD and DWT to remove the noises was evaluated by several standard metrics between filter EEG output and clean original signal.  The results obtained show that the ANFIS outperformed other denoising techniques in terms of localization of the components of the abnormal EEG signal. Due to non-stationary nature of the EEG signal, the uses of time-frequency techniques are inevitable. The parametric time-frequency technique used is Periodogram (PE). The EEG signals used are normal and abnormal; the abnormal signals are obtained from the patient that has the sleep-disordered breathing (SDB) and the patient that has the sleep movement disorders (periodic leg movements or PLM).  The PE technique shows its higher performance at the level of resolution and deleting any interference-terms over other non-parametric time-frequency techniques given in the scientific literature. This study demonstrates that the combination of ANFIS and the PE techniques are a good issue in the in biomedicine. For experimental study we have used the MIT/BIH arrhythmia database. Simulations were carried out in MATLAB environment.
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Keywords


EEG; ANFIS; EMD; DWT; Time-Frequency; Periodogram

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References


B. Kemp, AH. Zwinderman, B. Tuk, HAC Kamphuisen, JJL Oberyé, Analysis of a sleep-dependent neuronal feedback loop: the slow-wave microcontinuity of the EEG, IEEE-BME vol. 47, n. 9, 2000, 1185-1194.

F. I. Muchtadi, Suprijanto, Robinsar, I. Gunawan, Time-frequency analysis of EEG Signals Response Due to simple Acupuncture Stimulation, World Academy of Science, Engineering and Technology, Issue 50, 2009, 313-319.

MG. Terzano, L. Parrino, A. Sherieri, R. Chervin, S. Chokroverty, C. Guilleminault, M. Hirshkowitz, M. Mahowald, H. Moldofsky, A. Rosa, R. Thomas, A. Walters, Atlas, rules, and recording techniques for the scoring of cyclic alternating pattern (CAP) in human sleep. Sleep Med 2001, Vol 2, N 6, 537-553.

MG. Terzano, D. Mancia, MR. Salati, G. Costani, A. Decembrino, L. Parrino, The cyclic alternating pattern as a physiologic component of normal NREM sleep. American Academy of Sleep Medicine, Vol 8, N 2, 1985,137-145.

L. Parrino, R. Ferri, O. Bruni, M. G. Terzano, Cyclic alternating pattern (CAP): The marker of sleep instability. Sleep Med Rev, Vol 16, N 1, 2012, 27-45.

S. Elouaham, R. Latif, A. Dliou, M. Laaboubi, F. M. R. Maoulainine, Biomedical Signals Analysis Using the Empirical Mode Decomposition and Parametric and non Parametric Time-Frequency Techniques, International Journal on Information Technology (IREIT), Vol. 1 N. 1, 2013, 1-10.

A.N. Akansu, W.A. Serdijn, I.W. Selesnick, Wavelet Transforms in Signal Processing: A Review of Emerging Applications, Physical Communication, Elsevier, Vol 3, issue 1, 2010, 1-18.

R. Larson, David, Unitary systems and wavelet sets Wavelet Analysis and Applications, Appl. Numer. Harmon. Anal. Birkhäuser. 2007, pp. 143–171.

L. Sharma, S. Dandapat, A. Mahanta, Multiscale wavelet energies and relative energy based denoising of ecg signal: IEEE International Conference on Communication Control and Computing Technologies, 2010, pp. 491–495.

S. Elouaham, R. Latif, B. nassiri, A. Dliou, M. Laaboubi, F. Maoulainine, Analysis electrocardiogram signal using ensemble empirical mode decomposition and time-frequency techniques. International Journal of Computer Engineering & Technology (IJCET), Vol 4, N 2, 2013, 275-289.

H. Li, X. Deng, H. Dai, Structural damage detection using the combination method of EMD and wavelet analysis, Mechanical Systems and Signal Processing, Vol 21, N 1, 2007, 298–306.

Q. Gao, C. Duan, H. Fan, Q. Meng, Rotating machine fault diagnosis using empirical mode decomposition, Mechanical Systems and Signal Processing, Vol 22, n. 5, 2008, 1072–1081

Q. Du, S. Yang, Application of the EMD method in the vibration analysis of ball bearing, Mechanical Systems and Signal Processing. Vol 21, n. 6, 2007, 2634–2644.

G. Rilling, P. Flandrin, P. Goncalves, On Empirical Mode Decomposition and its Algorithms, IEEE-EURASIP Workshop on Nonlinear Signal and Image Processing, June, 2003, Grado-Trieste, Italy.

C. Kezi Selva Vijila, C.Ebbie Selva Kumar, Interference cancellation in EMG signal Using ANFIS, International Journal of Recent Trends in Engineering, Vol 2, No. 5, November 2009, 244 -248.

J-SR. Jang, ANFIS: Adaptive-network-based fuzzy inference system. IEEE Trans Syst Man Cybern, Vol 23, N 3, 1993, 665-85.

R.H. Clayton, A. Murray, “Estimation of the ECG signal spectrum during ventricular fibrillation using the fast Fourier transform and maximum entropy methods” Proceedings of the Computers in Cardiology, 1993, 867 – 870.

M.T. Özgen, Extension of the Capon’s spectral estimator to time–frequency analysis and to the analysis of polynomial-phase signals, Signal Process, Vol 83, N 3, 2003, 575–592.

S. Elouaham, R. Latif, A. Dliou, M. Laaboubi, F. M. R. Maoulainine, Parametric and non-parametric time-frequency analysis of biomedical signals, International Journal of Advanced Computer Science and Applications, Vol 4, n. 1, 2013, 74-79.

F. Castanié, Spectral Analysis Parametric and Non-Parametric Digital Methods (Ltd, 2006).

P. Goncalves F. Auger, P. Flandrin. Time-frequency toolbox,

(1995).

P. Flandrin, N. Martin,M. Basseville, Methodes temps-frequence (Trait. Signa 9, 1992)

R. Latif, E. Aassif, G. Maze, A. Moudden, B.Faiz, "Determination of the group and phase velocities from time-frequency representation of Wigner-Ville", Journal of Non Destructive Testing & Evaluation International, Vol. 32 n.7, 1999, pp. 415-422.

R. Latif, E. Aassif, G. Maze, D.Decultot, A. Moudden, B. Faiz, Analysis of the circumferential acoustic waves backscattered by a tube using the time-frequency representation of wigner-ville, Journal of Measurement Science and Technology, Vol. 11, n. 1, 2000, pp. 83-88.

R. Latif, E. Aassif, A. Moudden, B. Faiz, G. Maze , The experimental signal of a mullayer structure analysis by the time-frequency and spectral methods, NDT&E International, Vol. 39, n. 5, 2006, pp. 349-355.

R. Latif, E. Aassif, A. Moudden, B. Faiz, High resolution time- frequency analysis of an acoustic signal backscattered by a cylindrical shell using a Modified Wigner-Ville representation, Meas. Sci. Technol.14, 2003, pp. 1063-1067.

A. Djebbari, F. Bereksi-Reguig, A New Chirp–Based Wavelet for Heart Sounds Time–Frequency Analysis, (2011) International Journal on Communications Antenna and Propagation), 1 (1), pp. 92-102.

Laaboubi, M., Aassif, E., Latif, R., Maze, G., Moudden, A., Time-frequency spectrogram analysis of acoustic signals backscattered by an air-filled aluminium tube immersed in water, (2010) International Review on Computers and Software (IRECOS), 5 (2), pp. 145-149.

A. Dliou, R. Latif, M. Laaboubi, F.M.R. Maoulainine, Arrhythmia ECG Signal Analysis using Non Parametric Time-Frequency Techniques, International Journal of Computer Applications, Vol 41, n. 4, 2012, pp. 25-30.

A. Dliou, R. Latif, M. Laaboubi, F. M. R. Maoulainie, S. Elouaham , Noised abnormal ECG signal analysis by combining EMD and Choi-Williams techniques: IEEE conference publications; International Conference on Complex Systems (ICCS), 5-6 Novembre, 2012, Agadir, Morocco.


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