About this Research Topic
Although the studies of BCI using the advanced deep learning and/or transfer learning become more and more popular, there still exist many unsolved fundamental problems so far, such as deep learning representation of some EEG-based BCI data from multiple modalities, mapping data from one modality to another to achieve cross-source BCI data analysis, identifying and utilizing relations between elements from two or more different signal sources for comprehensive BCI data analysis, fusing information from two or more signal sources to perform a more accurate prediction, transferring knowledge between modalities and their representations, and recovering missing modality data given the observed ones.
In the past decade, several EEG-based BCI methods and technologies have been developed and shown promising results in some real-world examples such as neuroscience, medicine, and rehabilitation, which led to a proliferation of papers showing accuracy/performance and comparison, but most do not advance to real-time, translation or application. Then, these papers do not fare well, either because of lack of novelty (known technique) or no bio/med/experiment/clinical translation. For all the reasons mentioned above, it inspires us to exploit and develop effective advanced deep learning and/or transfer learning algorithms for addressing fundamental issues in BCI and rehabilitation fields.
The list of possible topics includes, but not limited to:
• Deep feedforward/belief/residual networks for BCI
• Generative adversarial networks for BCI
• Transfer learning for BCI
• Domain adaptation for BCI
• Deep-transfer learning for BCI
• BCI based healthcare system
• Highly interpretable intelligent system for BCI
Keywords: Brain-Computer Interfacing, Deep Learning, Transfer Learning, Clinical translation, Rehabilitation
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