Automatic Blink-based Bad EEG channels Detection for BCI Applications
Eva Guttmann-Flury, Yanyan Wei, and Shan Zhao

TL;DR
This paper introduces an automatic method using blink propagation patterns to detect and eliminate faulty EEG channels in BCI applications, significantly improving signal quality and classification accuracy.
Contribution
The novel ABCD algorithm leverages blink patterns for real-time detection of bad channels, outperforming traditional noise removal methods in EEG signal processing.
Findings
Achieved an average classification accuracy of 93.81% with the ABCD algorithm.
Outperformed ICA and ASR methods in detecting faulty channels.
Demonstrated the effectiveness of blink-based detection in improving BCI signal quality.
Abstract
In Brain-Computer Interface (BCI) applications, noise presents a persistent challenge, often compromising the quality of EEG signals essential for accurate data interpretation. This paper focuses on optimizing the signal-to-noise ratio (SNR) to improve BCI performance, with channel selection being a key method for achieving this enhancement. The Eye-BCI multimodal dataset is used to address the issue of detecting and eliminating faulty EEG channels caused by non-biological artifacts, such as malfunctioning electrodes and power line interference. The core of this research is the automatic detection of problematic channels through the Adaptive Blink-Correction and De-Drifting (ABCD) algorithm. This method utilizes blink propagation patterns to identify channels affected by artifacts or malfunctions. Additionally, segmented SNR topographies and source localization plots are employed to…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
