3.3 Study 3 – Three Class
Classification
The last study regarded the classification of the data
allowing to S3 through the composite classifier
described in Figure 3. The Calibration parameters
were the same of the previous studies. Results
showed accuracy values of 0.64 for the first subject
and 0.63 for the second.
Also in this case, the first subject exhibited more
balanced accuracy between the three classes than the
second subject (Table 3).
It is important to note that, in case of a three
classes classification problem, like this, the chance
level was 0.33. Also in this case, therefore, the
classifier accuracy was significantly greater than this
value.
Table 3: Classification results for the composed classifier.
Sub.
E1
hit
E1
err
E2
hit
E2
err
E3
hit
E3
err
E1
acc.
E2
acc.
E3
acc.
1 16 9 15 10 17 8 0.64 0.6 0.68
2 15 10 14 11 18 7 0.6 0.56 0.72
4 CONCLUSIONS
A poll based emotion classification strategy was
presented. This approach was based on a frequency
similarity research through selectable frequency
bands and channels sets. The strategy was suitable
for two emotional states detection or, extending the
underlying poll process, for multiple emotional
states classification and channels selection. The
more informative channels were selected through the
proposed poll method.
The proposed approach was tested in different
scenarios: detection of the disgust produced by the
memory of a stink with respect to relax; detection of
the pleasantness elicited by remembering a fragrance
with respect to relax; classification of all the
previously tested emotional states at the same time.
For the last classification problem, the obtained
classification accuracy (about 63%) was acceptable
by considering that all the emotional states were
self-induced and not externally elicited and that the
considered emotional states shared a significant
brain region of activation (Rolls et al., 2003).
The stepping from two recognized emotional
states to three emotional states could allow to obtain
a faster BCI system (larger is the alphabet, smaller is
the number of symbols necessary to compose the
same message).
Future developments will be dedicated to:
1) test the proposed classification strategy in real
time;
2) extend the proposed algorithm in a multi-states
classification (more than three between those
that can be self-induced);
3) implement an emotional BCI based on the
proposed protocol.
REFERENCES
Bin He, H., 2014. Brain-Computer Interfaces Using
Sensorimotor Rhythms: Current State and Future
Perspectives. IEEE Transactions on Biomedical
Engineering, 61(5), 1425-1435.
Bos, D. O., 2006. Eeg-based emotion recognition: The
influence of visual and auditory stimuli. Online.
Chanel, G., Kronegg, J., Grandjean, D. and Pun, T., 2006.
Emotion Assessment: Arousal Evaluation Using
EEG’s and Peripheral Physiological Signals.
Multimedia Content Representation, Classification
and Security, pp. 530-537.
Choppin, A., 2000. Eeg-based human interface for
disabled individuals: Emotion expression with neural
networks. Unpublished master’s thesis.
Draper, N. and Smith, H., 1998. Applied regression
analysis. New York: Wiley.
Furdea, A., Halder, S., Krusienski, D., Bross, D., Nijboer,
F., Birbaumer, N. and Kübler, A., 2009 An auditory
oddball (P300) spelling system for brain-computer
interfaces. Psychophysiology 46(3): 617-625.
Henkin, R. and Levy, L., 2001. Lateralization of Brain
Activation to Imagination and Smell of Odors Using
Functional Magnetic Resonance Imaging (fMRI): Left
Hemispheric Localization of Pleasant and Right
Hemispheric Localization of Unpleasant Odors.
Journal of Computer Assisted Tomography, 25(4):
493-514.
Iacoviello, D., Petracca, A., Spezialetti, M. and Placidi,
G., 2015. A Real-time classification algorithm for
EEG-based BCI driven by self-induced emotions.
Computer Methods and Programs in Biomedicine,
doi:10.1016/j.cmpb.2015.08.011.
Li, M. and Lu, B. L., 2009. Emotion classification based
on gamma-band EEG. 2009 Annual International
Conference of the IEEE Engineering in Medicine and
Biology Society.
Liu, Y., Sourina, O., and Nguyen, M. K., 2010. Real-time
EEG-based human emotion recognition and
visualization. 2010 International Conference on
Cyberworlds: 262-269.
Mathworks, 2015. MathWorks - MATLAB and Simulink
for Technical Computing. [online] Available at:
http://www.mathworks.com [Accessed 6 Jul. 2015].
Molina, G., Tsoneva, T. and Nijholt, A., 2009. Emotional
brain-computer interfaces. 2009 3rd International
Conference on Affective Computing and Intelligent
Interaction and Workshops.