Research Article
BibTex RIS Cite

Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması

Year 2016, Volume: 9 Issue: 1, 11 - 18, 07.06.2017

Abstract

Bu çalışmada; farklı hikayelerden
kaynaklı oluşan duyguların Elektroensefalogram (EEG) işareti üzerine
yansımasının incelenmesi amaçlanmıştır. Bu yansımada, EEG işaretinin güç
spektral yoğunluğu (GSY) dikkate alınmıştır. EEG işareti beyin sinir
hücrelerinin elektriksel aktivitelerinin yansıması olup, beyin fonksiyonları
için önemli bilgiler içermektedir. Kişiler farklı yaklaşımlarla
uyarıldıklarında, EEG işaretleri farklı özellikler gösterir. Duyguların EEG
üzerine olan etkisinin incelenmesinde, EEG’nin önemli alt bantlarını kapsayan
0-32Hz frekans aralığı kullanılmıştır. EEG işaretinin ilgilenilen frekans
aralığında filtrelenebilmesi için ayrık dalgacık dönüşümü kullanılmıştır. Ayrık
dalgacık dönüşümü geçici özellikler barındıran işaretlerin zaman – frekans
analizinde etkili bir yöntemdir. İlgili frekans aralığında filtrelenen EEG
işaretlerinin güç spektral kestirimleri, Burg yöntemi ile elde edilmiştir. Sonuçta,
hikayelerden kaynaklı oluşan farklı duyguların, EEG işaretinde farklı GSY
değerlerinin oluşumuna neden olduğu görülmüştür. Bu yansımaya benzer çalışmalar
literatürde yer almaktadır ve elde edilen sonuçlar çalışılan benzer çalışmaları
desteklemektedir.

References

  • Adeli, H., Zhou, Z. and Dadmehr N., Analysis of EEG records in an epileptic patient using wavelet transform, Journal of Neuroscıence Methods, Vol 123, Iss 1, 2003, pp. 68-87.
  • Sharma,R., Pachori, R. B., Classification of epileptic seizures in EEG signals based on phase space representation of intrinsic mode functions, Expert Systems with Applications 42, 2015, pp. 1106–1117.
  • Crespel,A. Gélisse,P., Bureau M. and Genton,P., Atlas of Electroencephalography, Third ed., J Libbey Eurotext, Paris, 2006.
  • Başar, E., Eroglu C.,Karaka,S., Schurmann, M., Brain oscillations in perception and memory, International Journal of Psychophysiology, 2000, 35, pp. 95-124.
  • Güntekin, B., Saatçi, E., Yener G., Decrease of evoked delta, theta and alpha coherences in Alzheimer patients during a visual oddball paradigm, Brain Research, Volume 1235, 2008, pp. 109-116.
  • Atagün, M.I., Güntekin, B., Ozerdem, A., Tülay, E., Basar, E., online first article. Decrease of theta response in euthymic bipolar patients during an oddball paradigm, Cognitive Neurodynamics, Volume 7, Issue 3, 2013, pp. 213-223.
  • Güntekin, B., Başar, E., A review of brain oscillations in perception of faces and emotional pictures, Neuropsychologia 58, 2014, pp. 33-51.
  • Güntekin, B., Basar, E., Event-related beta oscillations are affected by emotional eliciting stimuli, Neuroscience Letters, 483, 2010, pp. 173–178.
  • Liu, Y, Sourina, O, & Nguyen, M. K. Real-time EEG-based emotion recognition and its applications. In Transactions on computational science XII, Berlin, Heidelberg,. Marina L. Gavrilova and C. J. Kenneth Tan (Eds.). Springer-Verlag., 2011, pp. 256-277.
  • Murugappan, M, Nagarajan, R, & Yaacob, S. Appraising human emotions using time frequency analysis based EEG alpha band features. In Innovative Technologies in Intelligent Systems and Industrial Applications, CITISIA 2009, pp. 70-75.
  • Schaaff, K., Schultz, T., Toward Emotion Recognation from Electroencephalographic Signals, 3th İnternational Conference on Affective Computing and Intelligent Interaction and Workshop, Netherlands, 2009, pp. 1-6.
  • Lin, Y. P., Wang, C. H., Jung, T. P., Wu, T. L., Jeng, S. K., Duann, J. R., Chen, J. H., EEG-Based Emotion Recognition in Music Listening, IEEE Transaction on Biomedical Engineering, 57 (7), 2010, pp. 1798-1806
  • Wang, X. W., Nie, D., Lu, B. L., Emotional state classification from EEG data using machine learning approach, Neurocomputing, 129, 2014, 94-106.
  • Subasi, A., Signal Classification Using Wavelet Feature Extraction and a Mixture of Expert Model", Expert Systems with Applications, 2007, pp. 1084–1093.
  • Onton, J., Makeig, S., High- frequency broadband modulations of electrophalographic spectra, Frontiers in Neuroscience 159, 2009, pp. 99-120.
  • Subaşı, A., Erçelebi, E., Classification of EEG signals using neural network and logistic regression, Computer Methods and Programs in Biomedicine, 2005, 78, pp. 87-99.
  • Ocak, H., Optimal classification of epileptic seizures in EEG using wavelet analysis and genetic algorithm, Signal Processing, 88, 2008, pp. 1858-1867.
  • Daubechies I., The wavelet transform, time-frequency localization and signal analysis, IEEE Transaction on Information Theory, 36., 1990, pp. 961-1005.
  • Übeyli, E. D., Güler, İ., Dalgacık Dönüşümü ile EEG İşaretlerinden Çıkarılan Öznitelik Vektörleri Üzerine İstatistiksel İşlemlerin Gerçekleştirilmesi, Elektrik Elektronik- Bilgisayar Sempozyumu, Bursa, 2004, pp. 230-234.
  • Falamarzi Y., Palizdan N., Huangb Y. F. & Lee, T.S. , Estimating evapotranspiration from temperature and wind speeddata using artificial and wavelet neural networks (WNNs), Agricultural Water Management, 140, 2014, pp. 26–36.
  • Zahran,O., Kasban,H., Abd El-Saimie,F.E.,El-Kordy,M., Power density spectrum for the identification of residence time distribution signals, Applied Radiation and Isotopes.Vol 70, Iss 11, 2012, pp. 2638-2645
  • Hayes, M.H., Statistical Digital Signal Processing and Modelling, New York: John Wiley and Sons, 1996.
  • Yılmaz, A. S., Alkan, A., Investigation Power System Transient Disturbances in Frequency and Time – Frequency Domains, Journal of Engineering and Natural Sciences Mühendislik ve Fen Bilimleri Dergisi, 32, 2014, pp. 154-162.
Year 2016, Volume: 9 Issue: 1, 11 - 18, 07.06.2017

Abstract

References

  • Adeli, H., Zhou, Z. and Dadmehr N., Analysis of EEG records in an epileptic patient using wavelet transform, Journal of Neuroscıence Methods, Vol 123, Iss 1, 2003, pp. 68-87.
  • Sharma,R., Pachori, R. B., Classification of epileptic seizures in EEG signals based on phase space representation of intrinsic mode functions, Expert Systems with Applications 42, 2015, pp. 1106–1117.
  • Crespel,A. Gélisse,P., Bureau M. and Genton,P., Atlas of Electroencephalography, Third ed., J Libbey Eurotext, Paris, 2006.
  • Başar, E., Eroglu C.,Karaka,S., Schurmann, M., Brain oscillations in perception and memory, International Journal of Psychophysiology, 2000, 35, pp. 95-124.
  • Güntekin, B., Saatçi, E., Yener G., Decrease of evoked delta, theta and alpha coherences in Alzheimer patients during a visual oddball paradigm, Brain Research, Volume 1235, 2008, pp. 109-116.
  • Atagün, M.I., Güntekin, B., Ozerdem, A., Tülay, E., Basar, E., online first article. Decrease of theta response in euthymic bipolar patients during an oddball paradigm, Cognitive Neurodynamics, Volume 7, Issue 3, 2013, pp. 213-223.
  • Güntekin, B., Başar, E., A review of brain oscillations in perception of faces and emotional pictures, Neuropsychologia 58, 2014, pp. 33-51.
  • Güntekin, B., Basar, E., Event-related beta oscillations are affected by emotional eliciting stimuli, Neuroscience Letters, 483, 2010, pp. 173–178.
  • Liu, Y, Sourina, O, & Nguyen, M. K. Real-time EEG-based emotion recognition and its applications. In Transactions on computational science XII, Berlin, Heidelberg,. Marina L. Gavrilova and C. J. Kenneth Tan (Eds.). Springer-Verlag., 2011, pp. 256-277.
  • Murugappan, M, Nagarajan, R, & Yaacob, S. Appraising human emotions using time frequency analysis based EEG alpha band features. In Innovative Technologies in Intelligent Systems and Industrial Applications, CITISIA 2009, pp. 70-75.
  • Schaaff, K., Schultz, T., Toward Emotion Recognation from Electroencephalographic Signals, 3th İnternational Conference on Affective Computing and Intelligent Interaction and Workshop, Netherlands, 2009, pp. 1-6.
  • Lin, Y. P., Wang, C. H., Jung, T. P., Wu, T. L., Jeng, S. K., Duann, J. R., Chen, J. H., EEG-Based Emotion Recognition in Music Listening, IEEE Transaction on Biomedical Engineering, 57 (7), 2010, pp. 1798-1806
  • Wang, X. W., Nie, D., Lu, B. L., Emotional state classification from EEG data using machine learning approach, Neurocomputing, 129, 2014, 94-106.
  • Subasi, A., Signal Classification Using Wavelet Feature Extraction and a Mixture of Expert Model", Expert Systems with Applications, 2007, pp. 1084–1093.
  • Onton, J., Makeig, S., High- frequency broadband modulations of electrophalographic spectra, Frontiers in Neuroscience 159, 2009, pp. 99-120.
  • Subaşı, A., Erçelebi, E., Classification of EEG signals using neural network and logistic regression, Computer Methods and Programs in Biomedicine, 2005, 78, pp. 87-99.
  • Ocak, H., Optimal classification of epileptic seizures in EEG using wavelet analysis and genetic algorithm, Signal Processing, 88, 2008, pp. 1858-1867.
  • Daubechies I., The wavelet transform, time-frequency localization and signal analysis, IEEE Transaction on Information Theory, 36., 1990, pp. 961-1005.
  • Übeyli, E. D., Güler, İ., Dalgacık Dönüşümü ile EEG İşaretlerinden Çıkarılan Öznitelik Vektörleri Üzerine İstatistiksel İşlemlerin Gerçekleştirilmesi, Elektrik Elektronik- Bilgisayar Sempozyumu, Bursa, 2004, pp. 230-234.
  • Falamarzi Y., Palizdan N., Huangb Y. F. & Lee, T.S. , Estimating evapotranspiration from temperature and wind speeddata using artificial and wavelet neural networks (WNNs), Agricultural Water Management, 140, 2014, pp. 26–36.
  • Zahran,O., Kasban,H., Abd El-Saimie,F.E.,El-Kordy,M., Power density spectrum for the identification of residence time distribution signals, Applied Radiation and Isotopes.Vol 70, Iss 11, 2012, pp. 2638-2645
  • Hayes, M.H., Statistical Digital Signal Processing and Modelling, New York: John Wiley and Sons, 1996.
  • Yılmaz, A. S., Alkan, A., Investigation Power System Transient Disturbances in Frequency and Time – Frequency Domains, Journal of Engineering and Natural Sciences Mühendislik ve Fen Bilimleri Dergisi, 32, 2014, pp. 154-162.
There are 23 citations in total.

Details

Journal Section Makaleler(Araştırma)
Authors

Hasan Polat This is me

Mehmet Siraç Özerdem

Publication Date June 7, 2017
Published in Issue Year 2016 Volume: 9 Issue: 1

Cite

APA Polat, H., & Özerdem, M. S. (2017). Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması. Türkiye Bilişim Vakfı Bilgisayar Bilimleri Ve Mühendisliği Dergisi, 9(1), 11-18.
AMA Polat H, Özerdem MS. Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması. TBV-BBMD. June 2017;9(1):11-18.
Chicago Polat, Hasan, and Mehmet Siraç Özerdem. “Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması”. Türkiye Bilişim Vakfı Bilgisayar Bilimleri Ve Mühendisliği Dergisi 9, no. 1 (June 2017): 11-18.
EndNote Polat H, Özerdem MS (June 1, 2017) Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması. Türkiye Bilişim Vakfı Bilgisayar Bilimleri ve Mühendisliği Dergisi 9 1 11–18.
IEEE H. Polat and M. S. Özerdem, “Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması”, TBV-BBMD, vol. 9, no. 1, pp. 11–18, 2017.
ISNAD Polat, Hasan - Özerdem, Mehmet Siraç. “Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması”. Türkiye Bilişim Vakfı Bilgisayar Bilimleri ve Mühendisliği Dergisi 9/1 (June 2017), 11-18.
JAMA Polat H, Özerdem MS. Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması. TBV-BBMD. 2017;9:11–18.
MLA Polat, Hasan and Mehmet Siraç Özerdem. “Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması”. Türkiye Bilişim Vakfı Bilgisayar Bilimleri Ve Mühendisliği Dergisi, vol. 9, no. 1, 2017, pp. 11-18.
Vancouver Polat H, Özerdem MS. Farklı Hikayelerden Kaynaklı Oluşan Duyguların EEG İşareti Üzerine Yansıması. TBV-BBMD. 2017;9(1):11-8.

Article Acceptance

Use user registration/login to upload articles online.

The acceptance process of the articles sent to the journal consists of the following stages:

1. Each submitted article is sent to at least two referees at the first stage.

2. Referee appointments are made by the journal editors. There are approximately 200 referees in the referee pool of the journal and these referees are classified according to their areas of interest. Each referee is sent an article on the subject he is interested in. The selection of the arbitrator is done in a way that does not cause any conflict of interest.

3. In the articles sent to the referees, the names of the authors are closed.

4. Referees are explained how to evaluate an article and are asked to fill in the evaluation form shown below.

5. The articles in which two referees give positive opinion are subjected to similarity review by the editors. The similarity in the articles is expected to be less than 25%.

6. A paper that has passed all stages is reviewed by the editor in terms of language and presentation, and necessary corrections and improvements are made. If necessary, the authors are notified of the situation.

0

.   This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.