How Does a Single EEG Channel Tell Us About Brain States in Brain-Computer Interfaces ?
Zaineb Ajra, Binbin Xu, G\'erard Dray, Jacky Montmain, St\'ephane Perrey

TL;DR
This paper explores how single EEG channels can effectively classify brain states using CNNs, aiming to enable portable, real-world brain-computer interfaces with high accuracy.
Contribution
It introduces two strategies for training CNN models on single-channel EEG data, demonstrating high classification accuracy across multiple datasets.
Findings
Achieved up to 100% accuracy in binary classification tasks.
Demonstrated feasibility of single-channel EEG for brain state classification.
Proposed CNN models with few parameters for efficient processing.
Abstract
Over recent decades, neuroimaging tools, particularly electroencephalography (EEG), have revolutionized our understanding of the brain and its functions. EEG is extensively used in traditional brain-computer interface (BCI) systems due to its low cost, non-invasiveness, and high temporal resolution. This makes it invaluable for identifying different brain states relevant to both medical and non-medical applications. Although this practice is widely recognized, current methods are mainly confined to lab or clinical environments because they rely on data from multiple EEG electrodes covering the entire head. Nonetheless, a significant advancement for these applications would be their adaptation for "real-world" use, using portable devices with a single-channel. In this study, we tackle this challenge through two distinct strategies: the first approach involves training models with data…
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