Deep Convolutional Architectures for EEG Classification: A Comparative Study with Temporal Augmentation and Confidence-Based Voting
arXiv cs.AI / 3/17/2026
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Key Points
- The paper compares three deep CNN architectures for EEG ERP classification: a CSP-based 2D CNN, a second 2D CNN trained on raw data, and a 3D CNN that jointly models spatiotemporal representations.
- It introduces a temporal shift augmentation strategy during training to address ERP latency variability.
- At inference, a confidence-based test-time voting mechanism is used to stabilize predictions across shifted trials.
- Experimental evaluation with stratified five-fold cross-validation shows the 3D CNN significantly outperforms the 2D variants in AUC and balanced accuracy, while CSP provides a boost to the 2D model.
- The results highlight the value of temporal-aware architectures and augmentation strategies for robust EEG signal classification.
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