Motor Imagery Recognition Based on GMM-JCSFE Model
Features from EEG microstate models, such as time-domain statistical features and state transition probabilities, are typically manually selected based on experience. However, traditional microstate models assume abrupt transitions between states, and the classification features can vary among indiv...
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Main Authors: | Chuncheng Liao (Author), Shiyu Zhao (Author), Jiacai Zhang (Author) |
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Format: | Book |
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IEEE,
2024-01-01T00:00:00Z.
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Online Access: | Connect to this object online. |
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