Detection of Eye Blinks from EEG using Hidden Markov Models
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Detection of Eye Blinks from EEG using Hidden Markov Models
Eye blinks are one of the major sources of physiological noise during electroencephalography (EEG) recordings. [1]. There are two aspects in detecting eye ...