Abstract:
Objective: Recently, electroencephalography (EEG)- based brain-computer interfaces (BCIs) have made tremendous progress in increasing communication speed. However, curren...Show MoreMetadata
Abstract:
Objective: Recently, electroencephalography (EEG)- based brain-computer interfaces (BCIs) have made tremendous progress in increasing communication speed. However, current BCI systems could only implement a small number of command codes, which hampers their applicability. Methods: This study developed a high-speed hybrid BCI system containing as many as 108 instructions, which were encoded by concurrent P300 and steady-state visual evoked potential (SSVEP) features and decoded by an ensemble task-related component analysis method. Notably, besides the frequency-phase-modulated SSVEP and time-modulated P300 features as contained in the traditional hybrid P300 and SSVEP features, this study found two new distinct EEG features for the concurrent P300 and SSVEP features, i.e., time-modulated SSVEP and frequency-phase- modulated P300. Ten subjects spelled in both offline and online cued-guided spelling experiments. Other ten subjects took part in online copy-spelling experiments. Results: Offline analyses demonstrate that the concurrent P300 and SSVEP features can provide adequate classification information to correctly select the target from 108 characters in 1.7 seconds. Online cued-guided spelling and copy-spelling tests further show that the proposed BCI system can reach an average information transfer rate (ITR) of 172.46 ± 32.91 bits/min and 164.69 ± 33.32 bits/min respectively, with a peak value of 238.41 bits/min (The demo video of online copy-spelling can be found at https://www.youtube.com/watch?v=EW2Q08oHSBo). Conclusion: We expand a BCI instruction set to over 100 command codes with high-speed in an efficient manner, which significantly improves the degree of freedom of BCIs. Significance: This study hold promise for broadening the applications of BCI systems.
Published in: IEEE Transactions on Biomedical Engineering ( Volume: 67, Issue: 11, November 2020)
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- IEEE Keywords
- Index Terms
- Steady-state Visual Evoked Potential ,
- P300 Features ,
- Educational Settings ,
- EEG Features ,
- Ensemble Analysis ,
- Discriminant Analysis ,
- Visual Stimuli ,
- Fixed Point ,
- Linear Discriminant Analysis ,
- Refresh Rate ,
- Weight Vector ,
- Single Feature ,
- Recognition Process ,
- Target Stimuli ,
- Online Assessment ,
- Online Experiment ,
- Canonical Correlation Analysis ,
- Hybrid Feature ,
- Visual Fatigue ,
- Target Character ,
- Individual Template ,
- Multidimensional Variables ,
- Backward Stepwise Analysis ,
- Time Division Multiple Access ,
- Frequency Division Multiple Access ,
- EEG Signals ,
- Recognition Accuracy ,
- Target Selection ,
- Stepwise Discriminant Analysis
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Steady-state Visual Evoked Potential ,
- P300 Features ,
- Educational Settings ,
- EEG Features ,
- Ensemble Analysis ,
- Discriminant Analysis ,
- Visual Stimuli ,
- Fixed Point ,
- Linear Discriminant Analysis ,
- Refresh Rate ,
- Weight Vector ,
- Single Feature ,
- Recognition Process ,
- Target Stimuli ,
- Online Assessment ,
- Online Experiment ,
- Canonical Correlation Analysis ,
- Hybrid Feature ,
- Visual Fatigue ,
- Target Character ,
- Individual Template ,
- Multidimensional Variables ,
- Backward Stepwise Analysis ,
- Time Division Multiple Access ,
- Frequency Division Multiple Access ,
- EEG Signals ,
- Recognition Accuracy ,
- Target Selection ,
- Stepwise Discriminant Analysis
- Author Keywords
- MeSH Terms