TitleEffect of Feature Extraction on Automatic Sleep Stage Classification by Artificial Neural Network
Journal titleMetrology and Measurement Systems
Keywordssleep stage classification ; EEG signal ; power spectral density ; discrete wavelet transform ; empirical mode decomposition ; artificial neural network
Divisions of PASNauki Techniczne
PublisherPolish Academy of Sciences Committee on Metrology and Scientific Instrumentation
TypeArtykuły / Articles
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