Abstract
The paper presents a k-means based semi-supervised clustering approach for
recognizing and classifying P300 signals for BCI Speller System. P300 signals are proved to
be the most suitable Event Related Potential (ERP) signal, used to develop the BCI systems.
Due to non-stationary nature of ERP signals, the wavelet transform is the best analysis tool
for extracting informative features from P300 signals. The focus of the research is on semi-
supervised clustering as supervised clustering approach need large amount of labeled data
for training, which is a tedious task. Hence works for small-labeled datasets to train
classifiers. On the other hand, unsupervised clustering works when no prior information is
available i.e. totally unlabeled data. Thus leads to low level of performance. The in-between
solution is to use semi-supervised clustering, which uses a few labeled with large unlabeled
data causes less trouble and time. The authors have selected and defined adhoc features and
assumed the Clusters for small datasets. This motivates us to propose a novel app
roach that
discovers the features embedded in P300 (EEG) signals, using an k-means based semi-
supervised cluster classification using ensemble SVM.
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