ASPEN: Spectral-Temporal Fusion for Cross-Subject Brain Decoding
About
Cross-subject generalization in EEG-based brain-computer interfaces (BCIs) remains challenging due to individual variability in neural signals. We investigate whether spectral representations offer more stable features for cross-subject transfer than temporal waveforms. Through correlation analyses across three EEG paradigms (SSVEP, P300, and Motor Imagery), we find that spectral features exhibit consistently higher cross-subject similarity than temporal signals. Motivated by this observation, we introduce ASPEN, a hybrid architecture that combines spectral and temporal feature streams via multiplicative fusion, requiring cross-modal agreement for features to propagate. Experiments across six benchmark datasets reveal that ASPEN is able to dynamically achieve the optimal spectral-temporal balance depending on the paradigm. ASPEN achieves the best unseen-subject accuracy on three of six datasets and competitive performance on others, demonstrating that multiplicative multimodal fusion enables effective cross-subject generalization.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| MI | Lee Subject 2019 | Accuracy76.27 | 7 | |
| P300 | BNCI Session 2014 | Accuracy89.65 | 7 | |
| P300 | BNCI Subject 2014 | Accuracy88.57 | 7 | |
| SSVEP | Lee Session 2019 | Accuracy95.5 | 7 | |
| SSVEP | Lee Subject 2019 | Accuracy87.53 | 7 | |
| MI | Lee2019 Session | Accuracy77.93 | 7 | |
| MI | BNCI2014 Subject | Accuracy32 | 7 | |
| MI | BNCI Session 2014 | Accuracy51.59 | 7 | |
| P300 | BI Session 2014b | Accuracy77.95 | 7 | |
| P300 | BI Subject 2014b | Accuracy77.01 | 7 |