emotions are changed according to emotions that the
user is feeling during the music listening. Second,
we implemented an EEG-enable music therapy web-
site. The user/patient’s emotion is recognized from
EEG, and the corresponding music piece is
downloaded according to the emotion recognized
from the EEG of the user. In Figure 5(b), emotions
are induced by music stimuli played through the
earphone, and then the “inner” user’s emotion is
recognized from the EEG signal in real-time. Then,
a pleasant song is played to the user upon
recognizing the user is being sad to improve his/her
mood or the corresponding music is played to calm
down the user if he/she is too excited (happy or
angry) or too nervous feeling “fear” emotion. A
simple music therapy algorithm was proposed
allowing automatically down load the corresponding
music piece based on the recognized emotion to
change the user mood. The choice of the appropriate
music from the list could be given the user as well.
6 CONCLUSIONS
In this paper, we proposed and described a novel
spatio-temporal fractal based approach to study
different brain states such as concentration levels,
human emotions, and in future other brain states
such as “central pain” feeling, attention levels, etc.
Using just one fractal dimension feature per channel
and the simple machine learning algorithm allows us
to implement real-time brain recognition
applications with acceptable accuracy that could be
improved by subject-based training. We expect
further use of the proposed approach in different
real-time applications. It could be also used in
studies such as validation of the hypotheses: emotion
induction could change pain level in the patients; the
positive emotions could improve human
performance, etc. We also work on the improvement
on the real-time filtering of artefacts of different
origin. The work described in the paper is a part of
the project EmoDEx presented in (IDM-Project,
2008).
ACKNOWLEDGEMENTS
This project is supported by the grant NRF2008
IDM-IDM004-020 “Emotion-based personalized
digital media experience in Co-Spaces” of National
Research Fund of Singapore.
REFERENCES
1991. American electroencephalographic society
guidelines for standard electrode position
nomenclature. Journal of Clinical Neurophysiology, 8,
200-202.
Blinn, J. F. 1982. Generalization Of Algebraic Surface
Drawing. Computer Graphics (ACM), 16, 273.
Block, A., Von Bloh, W. & Schellnhuber, H. J. 1990.
Efficient box-counting determination of generalized
fractal dimensions. Physical Review A, 42, 1869-1874.
Chanel, G., Kierkels, J. J. M., Soleymani, M. & Pun, T.
2009. Short-term emotion assessment in a recall
paradigm. International Journal of Human Computer
Studies, 67, 607-627.
Chanel, G., Kronegg, J., Grandjean, D. & Pun, T. 2006.
Emotion assessment: Arousal evaluation using EEG's
and peripheral physiological signals
Coben, r., Linden, M. & Myers, T. E. 2010.
Neurofeedback for autistic spectrum disorder: A
review of the literature. Applied Psychophysiology
Biofeedback, 35, 83-105.
Demos, J. N. 2005. Getting Started with Neurofeedback,
New York, WW Norton & Company.
Fuchs, T., Birbaumer, N., Lutzenberger, W., Gruzelier, J.
H. & Kaiser, J. 2003. Neurofeedback treatment for
attention-deficit/hyperactivity disorder in children: A
comparison with methylphenidate. Applied
Psychophysiology Biofeedback, 28, 1-12.
Gevensleben, H., Holl, B., Albrecht, B., Schlamp, D.,
Kratz, O., Studer, P., Wangler, S., Rothenberger, A.,
Moll, G. H. & Heinrich, H. 2009. Distinct EEG effects
related to neurofeedback training in children with
ADHD: A randomized controlled trial. International
Journal of Psychophysiology, 74, 149-157.
HAPTEK. Available: http://www.haptek.com [Accessed].
hentschel, H. G. E. & Procaccia, I. 1983. The infinite
number of generalized dimensions of fractals and
strange attractors. Physica D: Nonlinear Phenomena,
8, 435-444.
Higuchi, T. 1988. Approach to an irregular time series on
the basis of the fractal theory. Physica D: Nonlinear
Phenomena, 31, 277-283.
IDM-PROJECT. 2008. Emotion-based personalized
digital media experience in Co-Spaces [Online].
Available: http://www3.ntu.edu.sg/home/eosourina/
CHCILab/projects.html [Accessed].
Ishino, K. & Hagiwara, M. Year. A feeling estimation
system using a simple electroencephalograph. In
,
2003. 4204-4209.
Khalili, Z. & Moradi, M. H. Year. Emotion recognition
system using brain and peripheral signals: Using
correlation dimension to improve the results of EEG.
In: Proceedings of the International Joint Conference
on Neural Networks, 2009. 1571-1575.
Kouijzer, M. E. J., Van Schie, H. T., De Moor, J. M. H.,
Gerrits, B. J. L. & Buitelaar, J. K. 2010.
Neurofeedback treatment in autism. Preliminary
findings in behavioral, cognitive, and
A REAL-TIME FRACTAL-BASED BRAIN STATE RECOGNITION FROM EEG AND ITS APPLICATIONS
89