The Deep-Match Framework for Event-Related Potential Detection in EEG
Marek Zylinski, Bartosz Tomasz Smigielski, Gerard Cybulski

TL;DR
This paper introduces the Deep-Match framework that enhances single-trial ERP detection in EEG by integrating prior ERP knowledge into deep learning models, improving robustness and accuracy across subjects.
Contribution
The study proposes a novel deep learning approach that incorporates ERP templates into kernel initialization, leading to better detection performance and robustness in EEG analysis.
Findings
Deep-MF model outperforms standard models in F1-score.
ERP-informed kernel initialization improves cross-subject robustness.
Achieved maximum F1-score of 0.71, surpassing standard model results.
Abstract
Reliable detection of event-related potentials (ERPs) at the single-trial level remains a major challenge due to the low signal-to-noise ratio EEG recordings. In this work, we investigate whether incorporating prior knowledge about ERP templates into deep learning models can improve detection performance. We employ the Deep-Match framework for ERP detection using multi-channel EEG signals. The model is trained in two stages. First, an encoder-decoder architecture is trained to reconstruct input EEG signals, enabling the network to learn compact signal representations. In the second stage, the decoder is replaced with a detection module, and the network is fine-tuned for ERP identification. Two model variants are evaluated: a standard model with randomly initialized filters and a Deep-MF model in which input kernels are initialized using ERP templates. Model performance is assessed on a…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Emotion and Mood Recognition
