Reconstructed EEG windows from BCI Competition IV Dataset 1 using EEGReXferNet
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https://figshare.com/articles/dataset/Reconstructed_EEG_windows_from_BCI_Competition_IV_Dataset_1_using_EEGReXferNet/30343642
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This dataset provides reconstructed EEG windows from BCI Competition IV Dataset 1, created using EEGReXferNet, a lightweight AI framework for EEG subspace reconstruction via cross-subject transfer learning and channel-aware embedding.The repository for the framework is available on GitHub: https://github.com/ShanSarkar75/EEGReXferNet/Dataset Structure:data/└── BCICIV/ ├── ds1a/ │ └── Recon/c0/ # Reconstructed EEG windows (.npz) ├── ds1b/ │ └── Recon/c0/ ├── ds1f/ │ └── Recon/c0/ └── ds1g/ └── Recon/c0/Each subject-specific folder contains reconstructed EEG windows in .npz format.Files are organized by subject, model type (A, B, C, D), and window type:Clean windowsNoisy windows (> ±3.5 σ)Note: Due to GitHub file size limitations, reconstructed EEG windows are shared via FigShare. Users are encouraged to download the relevant files before performing model/data analysis or validation.Citation:If you use this data in your research, please cite:@article {Sarkar2025EEGReXferNet, author = {Shantanu Sarkar and Piotr Nabrzyski and Saurabh Prasad and Jose Luis Contreras-Vidal}, title = {‘EEGReXferNet’ – A Lightweight Gen-AI Framework for EEG Subspace Reconstruction via Cross-Subject Transfer Learning and Channel-Aware Embedding}, year = {2025}, note = {Preprint},}Acknowledgment: This work uses data from BCI Competition IV Dataset 1 [1].References:[1] Blankertz, B., Dornhege, G., Krauledat, M., Müller, K.-R., & Curio, G. (2007). The non-invasive Berlin Brain-Computer Interface: Fast acquisition of effective performance in untrained subjects. NeuroImage, 37(2), 539–550. DOI: https://doi.org/10.1016/j.neuroimage.2007.01.051
创建时间:
2025-10-13



