TL;DR
This paper introduces a compact CNN that automatically decodes asynchronous SSVEP signals from EEG with high accuracy, outperforming traditional methods and providing insights into neural feature representations.
Contribution
The study presents a novel compact CNN approach that decodes SSVEP signals without domain knowledge, enabling asynchronous BCI applications and advancing understanding of neural features.
Findings
Achieved ~80% accuracy on 12-class SSVEP dataset
Outperformed traditional CCA-based methods
Extracted phase and amplitude features related to neural signals
Abstract
Steady-State Visual Evoked Potentials (SSVEPs) are neural oscillations from the parietal and occipital regions of the brain that are evoked from flickering visual stimuli. SSVEPs are robust signals measurable in the electroencephalogram (EEG) and are commonly used in brain-computer interfaces (BCIs). However, methods for high-accuracy decoding of SSVEPs usually require hand-crafted approaches that leverage domain-specific knowledge of the stimulus signals, such as specific temporal frequencies in the visual stimuli and their relative spatial arrangement. When this knowledge is unavailable, such as when SSVEP signals are acquired asynchronously, such approaches tend to fail. In this paper, we show how a compact convolutional neural network (Compact-CNN), which only requires raw EEG signals for automatic feature extraction, can be used to decode signals from a 12-class SSVEP dataset…
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