Bayesian Uncertainty Modeling for P300-Based Brain-Computer Interface
P300 potential is important to cognitive neuroscience research, and has also been widely applied in brain-computer interfaces (BCIs). To detect P300, many neural network models, including convolutional neural networks (CNNs), have achieved outstanding results. However, EEG signals are usually high-d...
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Main Authors: | Ronghua Ma (Author), Hao Zhang (Author), Jun Zhang (Author), Xiaoli Zhong (Author), Zhuliang Yu (Author), Yuanqing Li (Author), Tianyou Yu (Author), Zhenghui Gu (Author) |
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Format: | Book |
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IEEE,
2023-01-01T00:00:00Z.
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Online Access: | Connect to this object online. |
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