MultiDiffNet: A Multi-Objective Diffusion Framework for Generalizable Brain Decoding
About
Neural decoding from electroencephalography (EEG) remains fundamentally limited by poor generalization to unseen subjects, driven by high inter-subject variability and the lack of large-scale datasets to model it effectively. Existing methods often rely on synthetic subject generation or simplistic data augmentation, but these strategies fail to scale or generalize reliably. We introduce \textit{MultiDiffNet}, a diffusion-based framework that bypasses generative augmentation entirely by learning a compact latent space optimized for multiple objectives. We decode directly from this space and achieve state-of-the-art generalization across various neural decoding tasks using subject and session disjoint evaluation. We also curate and release a unified benchmark suite spanning four EEG decoding tasks of increasing complexity (SSVEP, Motor Imagery, P300, and Imagined Speech) and an evaluation protocol that addresses inconsistent split practices in prior EEG research. Finally, we develop a statistical reporting framework tailored for low-trial EEG settings. Our work provides a reproducible and open-source foundation for subject-agnostic EEG decoding in real-world BCI systems.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| SSVEP | Wang2016 Session | Accuracy91.74 | 7 | |
| SSVEP | Wang Subject 2016 | Accuracy87.95 | 7 | |
| MI | BNCI Session 2014 | Accuracy58.53 | 7 | |
| P300 | BI Session 2014b | Accuracy81.46 | 7 | |
| P300 | BI Subject 2014b | Accuracy80.95 | 7 | |
| MI | Lee2019 Session | Accuracy76.54 | 7 | |
| MI | Lee Subject 2019 | Accuracy74.67 | 7 | |
| P300 | BNCI Session 2014 | Accuracy85.42 | 7 | |
| P300 | BNCI Subject 2014 | Accuracy84.91 | 7 | |
| SSVEP | Lee Session 2019 | Accuracy93.67 | 7 |