Sliding Window and Filterbank Utilization on Riemannian Geometry
Özet
Riemannian geometry-based signal processing
approaches on EEG signals provides similar decoding
performance compared to state-of-the-art methods. However,
Riemannian geometry framework requires predefine EEG
signal epoch that is to be used in the analysis. Sliding window
approach that operates in Riemannian geometry proposed to
enable use of EEG signals without constrained by the record
length. Decoding performance of tangent space mapping was
increased more than 6% in overall accuracy compared the
previous study’s results. Instead of using single band-pass filter,
utilization of filterbank is proposed to increase decoding
performance. Distance based Riemannian classifier’s overall
performance were increased by 5% compared to standard
Riemannian geometry approach.