Research on SSVEP-EEG feature enhancement Algorithm based on fractional
differentiation
Abstract
Steady-State Visual Evoked Potentials (SSVEP) have garnered significant
attention due to their promising applications in brain-computer
interfaces (BCI), medical diagnostics, and several other domains.
Enhancing the characteristics of SSVEP signals through intricate signal
processing has emerged as a pivotal research focus for more efficient
signal extraction. In this work, we introduce a novel layered
enhancement algorithm for SSVEP electroencephalogram (SSVEP-EEG) signals
based on fractional-order differentiation operators. This innovative
approach marries brain signal analysis with image processing
methodologies. By utilizing fractional-order differentiation operators
in tandem with the Laplace pyramid, the signal undergoes hierarchical
enhancement. This amplified signal is then reconstructed, which
facilitates an in-depth extraction of image intricacies and attributes,
ultimately accentuating the distinctiveness of SSVEP features. To
validate the efficacy of the proposed method, we applied it to three
recognized target identification algorithms: Canonical Correlation
Analysis (CCA), Filter Bank Canonical Correlation Analysis (FBCCA), and
Task-Related Component Analysis (TRCA) using a publicly available
dataset. Experimental outcomes underscore that, in contrast to
contemporary techniques, our proposed algorithm not only effectively
attenuates the trend components of SSVEP signals but also substantially
elevates the recognition precision of CCA, FBCCA, and TRCA.