Title of article :
Classication of EEG-based motor imagery BCI by using ECOC
Author/Authors :
Mobarezpour, Jahangir Institute for Cognitive and Brain Science - Shahid Beheshti University GC, Evin Sq, Tehran, Iran , Khosrowabadi, Reza Institute for Cognitive and Brain Science - Shahid Beheshti University GC, Evin Sq, Tehran, Iran , Ghaderi, Reza Institute for Cognitive and Brain Science - Shahid Beheshti University GC, Evin Sq, Tehran, Iran , Navi, Keivan Institute for Cognitive and Brain Science - Shahid Beheshti University GC, Evin Sq, Tehran, Iran
Abstract :
Accuracy in identifying the subjects intentions for moving their different limbs from EEG signals
is regarded as an important factor in the studies related to BCI. In fact, the complexity of motor-
imagination and low amount of signal-to-noise ratio for EEG signal makes this identication as a
difficult task. In order to overcome these complexities, many techniques such as various feature
extraction methods, learning algorithms, and classier schemes have been developed in this regard.
However, conducting more research is necessary for improvement. The present study aimed to use an
ensemble learning approach to improve the performance of MI-BCI systems. Therefore, lter bank
common spatial pattern (FBCSP), as a well-known feature extraction method, was used to produce
separable features from EEG signals. Accordingly, error correcting output codes (ECOC) was applied
on several learning algorithms to classify four classes of motor imagery tasks. The proposed ECOC
ensemble technique was tested on the data set 2a from BCI competition IV. Based on the results, the
ECOC can lead to an improvement by using the naive Bayesian parzen window algorithm, compared
to the winner algorithm of BCI competition IV, which is superior to other selected state of the art
algorithms.
Keywords :
Filter bank common spatial pattern (FBCSP) , Motor imagery , Electroencephalography (EEG) , Error Correcting Output Codes (ECOC) , Brain computer interface (BCI)