Synthetic Data Generation for Brain-Computer Interfaces: Overview, Benchmarking, and Future Directions
arXiv cs.AI / 3/16/2026
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Key Points
- The article surveys synthetic brain signal generation for BCIs, highlighting how limited, heterogeneous, and privacy-sensitive recordings motivate data augmentation through synthetic data.
- It categorizes generative approaches into knowledge-based, feature-based, model-based, and translation-based methods, providing a comprehensive taxonomy.
- It benchmarks these synthetic brain signal generation methods across four representative BCI paradigms, enabling objective performance comparisons.
- It discusses potentials, challenges, and future directions toward accurate, data-efficient, and privacy-aware BCI systems, and points to a public benchmark codebase.
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