Title: | A Comparative Analysis on Feature Extraction and Classification of EEG Signal for Brain-Computer Interface Applications |
---|---|
Authors: |
|
DOI: |
|
Keywords: | Brain-Computer Interface (BCI), Time Domain Parameters (TDP), Adaptive Auto-Regressive Parameters (AAR), Linear Discriminant Analysis (LDA), Support Vector Machine (SVM) |
Abstract: |
Classification of EEG signal for Brain-Computer Interface (BCI)
applications consists of three stages: Pre-processing; Feature
extraction and Classification. There are different methods implemented
in these stages found in existing literature. However, the performance
of the methods has been measured on different datasets which made the
results incomparable to each other. To address this problem, in this
paper, different combination of feature extraction and classification
methods has been implemented to classify a well known dataset (dataset
2A, BCI Competition IV) so that a comparative analysis can be made based
on identical platform to find out the best combination of methods. In
the pre-processing step, the EEG data was band-pass filtered to remove
the artifacts and Common Spatial Pattern (CSP) was applied to increase
the discriminativity of the data. Two types of features: Time Domain
Parameters (TDP) and Adaptive Auto-Regressive (AAR) parameters were
extracted from the pre-processed EEG signal. The features were
classified using two types of classifiers: Linear Discriminant Analysis
(LDA) and Support Vector Machine (SVM). A comparative analysis has been
conducted to identify the best combination of feature and classifier.
The analysis reveals that, TDP features classified using LDA classifier
provides best performance and hence demands application in real time BCI
system. |
References: |
|