HCMLSep 11, 2017

Evaluation of Classical Features and Classifiers in Brain-Computer Interface Tasks

arXiv:1709.03252v21 citations
AI Analysis

This work provides incremental insights for researchers in BCI by identifying effective features and classifiers for blind classification of brain signals.

The study evaluated classical features and classifiers for Brain-Computer Interface tasks, finding that energy in α and β frequency bands with statistical parameters were most effective, and Bayesian classifier with Gaussian assumption and SVM performed best across nine datasets.

Brain-Computer Interface (BCI) uses brain signals in order to provide a new method for communication between human and outside world. Feature extraction, selection and classification are among the main matters of concerns in signal processing stage of BCI. In this article, we present our findings about the most effective features and classifiers in some brain tasks. Six different groups of classical features and twelve classifiers have been examined in nine datasets of brain signal. The results indicate that energy of brain signals in α and \b{eta} frequency bands, together with some statistical parameters are more effective, comparing to the other types of extracted features. In addition, Bayesian classifier with Gaussian distribution assumption and also Support Vector Machine (SVM) show to classify different BCI datasets more accurately than the other classifiers. We believe that the results can give an insight about a strategy for blind classification of brain signals in brain-computer interface.

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