Identification of Observations of Correct or Incorrect Actions using Second Order Statistical Features of Event Related Potentials
P. Asvestas, A. Korda, S. Kostopoulos, I. Karanasiou, G. K. Matsopoulos, E. M. Ventouras
2015
Abstract
The identification of correct or incorrect actions is a very significant task in the field of the brain-computer interface systems. In this paper, observations of correct or incorrect actions are identified by means of event related potentials (ERPs) that represent the brain activity as a response to an external stimulus or event. ERP signals from 47 electrodes, located on various positions on the scalp, were acquired from sixteen volunteers. The volunteers observed correct or incorrect actions of other subjects, who performed a special designed task. The recorded signals were analysed and five second order statistical features were calculated from each one. The most prominent features were selected using a statistical ranking procedure forming a set of 32 feature vectors, which were fed to a Support Vector Machines (SVM) classifier. The performance of the classifier was assessed by means of the leave-one-out cross validation procedure resulting in classification accuracy 84.4%. The obtained results indicate that the analysis of ERP-signals that are collected during the observation of the actions of other persons could be used to understand the specific cognitive processes that are responsible for processing the observed actions.
References
- Aniyan, A. K., Philip, N. S., Samar, V. J., Desjardins, J. A. & Segalowitz, S. J. 2014. A Wavelet Based Algorithm For The Identification Of Oscillatory Event-Related Potential Components. J Neurosci Methods, 233, 63- 72.
- Bezdek, J.-C. 1981. Pattern Recognition With Fuzzy Objective Function Algorithms, Plenum Press.
- Boser, B. E., Guyon, I. M. & Vapnik, V. N. A Training Algorithm For Optimal Margin Classifiers. 5th Annual Workshop On Computational Learning Theory - Colt 7892, 1992. 144.
- Chandrashekar, G. & Sahin, F. 2014. A Survey On Feature Selection Methods. Computers And Electrical Engineering, 40, 16-28.
- De Bruijn, E. R. A. & Von Rhein, D. T. 2012. Is Your Error My Concern? An Event-Related Potential Study On Own And Observed Error Detection In Cooperation And Competition. Front Neurosci.
- Desmet, C., Deschrijver, E. & Brass, M. 2014. How Social Is Error Observation? The Neural Mechanisms Underlying The Observation Of Human And Machine Errors. Social Cognitive And Affective Neuroscience, 9, 427-435.
- Falkenstein, M., Hoormann, J., Christ, S. & Hohnsbein, J. 2000. Erp Components On Reaction Errors And Their Functional Significance: A Tutorial. Biol. Psychol., 51, 87-107.
- Ferrez, P. W. & Millán, J. D. R. 2008. Error-Related Eeg Potentials Generated During Simulated BrainComputer Interaction. Ieee Trans. Biomed. Eng., 55, 923-929.
- Gratton, G., Coles, M. G. H. & Donchin, E. 1983. A New Method For Off-Line Removal Of Ocular Artifact. Electroencephalogr. Clin. Neurophysiol., 55, 468-484.
- Guyon, I. & Elisseeff, A. 2003. An Introduction To Variable And Feature Selection. Journal Of Machine Learning Research, 3, 1157-1182.
- Haralick, R. M., Shanmugam, K. & Dinstein, I. 1973. Textural Features For Image Classification. Ieee Trans. On Systems, Man And Cybernetics, 3, 610-621.
- Hartigan, J. A. 1975. Clustering Algorithms, John Wiley & Sons Inc.
- Kohonen, T. 1982. Self-Organized Formation Of Topologically Correct Feature Maps. Biological Cybernetics, 1, 59-69.
- Liang, P., Zhong, N., Lu, S. & Liu, J. 2010. Erp Characteristics Of Sentential Inductive Reasoning In Time And Frequency Domains. Cognitive Systems Research, 11, 67-73.
- Liu, H. & Motoda, H. 1998. Feature Selection For Knowledge Discovery And Data Mining, Kluwer Academic Publishers.
- Millán, J. D., Rupp, R., M¼Ller-Putz, G. R., MurraySmith, R., Giugliemma, C., Tangermann, M., Vidaurre, C., Cincotti, F., Kubler, A., Leeb, R., Neuper, C., Muller, K. R. & Mattia, D. 2010. Combining Brain-Computer Interfaces And Assistive Technologies: State-Of-The-Art And Challenges. Front Neurosci.
- Montgomery, D. C. & Rumger, G. C. 2003. Applied Statistics And Probability For Engineers, New Jersey, John Wiley & Sons, Inc.
- Newman-Norlund, R. D., Ganesh, S., Van Schie, H. T., De Bruijn, E. R. A. & Bekkering, H. 2009. SelfIdentification And Empathy Modulate Error-Related Brain Activity During The Observation Of Penalty Shots Between Friend And Foe. Social Cognitive And Affective Neuroscience, 4, 10-22.
- Petrosini, L., Graziano, A., Mandolesi, L., Neri, P., Molinari, M. & Leggio, M. G. 2003. Watch How To Do It! New Advances In Learning By Observation. Brain Res Rev., 42, 252-264.
- Ridderinkhof, K. R., Ullsperger, M., Crone, E. A. & Nieuwenhuis, S. 2004. The Role Of The Medial Frontal Cortex In Cognitive Control. Science, 306, 443-447.
- Scheffers, M. K. & Coles, M. G. H. 2000. Performance Monitoring In A Confusing World: Error-Related Brain Activity, Judgments Of Response Accuracy, And Types Of Errors. J Exp Psychol Hum Percept Perform., 26, 141-151.
- Seymour, G. 1993. Predictive Inference, New York, Chapman And Hall.
- Sotoca, J. M. & Pla, F. 2010. Supervised Feature Selection By Clustering Using Conditional Mutual InformationBased Distances. Pattern Recognition, 43, 2068-2081.
- Steinwart, I. & Christmann, A. 2008. Support Vector Machines, New York, Springer.
- Theodoridis, S. & Koutroumbas, K. 2009. Pattern Recognition, Academic Press.
- Tsai, C.-F., Eberle, W. & Chu, C.-Y. 2013. Genetic Algorithms In Feature And Instance Selection. Knowledge-Based Systems, 39, 240-247.
- Van Schie, H. T., Mars, R. B., Coles, M. G. H. & Bekkering, H. 2004. Modulation Of Activity In Medial Frontal And Motor Cortices During Error Observation. Nat Neurosci., 7, 549-554.
- Ventouras, E. M., Asvestas, P., Karanasiou, I. & Matsopoulos, G. K. 2011. Classification Of ErrorRelated Negativity (Ern) And Positivity (Pe) Potentials Using Knn And Support Vector Machines. Comput Biol Med., 41, 98-109.
- Vi, C. T., Jamil, I., Coyle, D. & Subramanian, S. 2014. Error Related Negativity In Observing Interactive Tasks. 32nd Annual Acm Conference On Human Factors In Computing Systems. Toronto Canada.
- Yue, X., Mo, H. & Chi, Z.-H. 2008. Immune-Inspired Incremental Feature Selection Technology To Data Streams. Applied Soft Computing, 8, 1041-1049.
Paper Citation
in Harvard Style
Asvestas P., Korda A., Kostopoulos S., Karanasiou I., K. Matsopoulos G. and M. Ventouras E. (2015). Identification of Observations of Correct or Incorrect Actions using Second Order Statistical Features of Event Related Potentials . In Proceedings of the International Conference on Bio-inspired Systems and Signal Processing - Volume 1: BIOSIGNALS, (BIOSTEC 2015) ISBN 978-989-758-069-7, pages 158-164. DOI: 10.5220/0005186501580164
in Bibtex Style
@conference{biosignals15,
author={P. Asvestas and A. Korda and S. Kostopoulos and I. Karanasiou and G. K. Matsopoulos and E. M. Ventouras},
title={Identification of Observations of Correct or Incorrect Actions using Second Order Statistical Features of Event Related Potentials},
booktitle={Proceedings of the International Conference on Bio-inspired Systems and Signal Processing - Volume 1: BIOSIGNALS, (BIOSTEC 2015)},
year={2015},
pages={158-164},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0005186501580164},
isbn={978-989-758-069-7},
}
in EndNote Style
TY - CONF
JO - Proceedings of the International Conference on Bio-inspired Systems and Signal Processing - Volume 1: BIOSIGNALS, (BIOSTEC 2015)
TI - Identification of Observations of Correct or Incorrect Actions using Second Order Statistical Features of Event Related Potentials
SN - 978-989-758-069-7
AU - Asvestas P.
AU - Korda A.
AU - Kostopoulos S.
AU - Karanasiou I.
AU - K. Matsopoulos G.
AU - M. Ventouras E.
PY - 2015
SP - 158
EP - 164
DO - 10.5220/0005186501580164