Details

Title

Effect of Feature Extraction on Automatic Sleep Stage Classification by Artificial Neural Network

Journal title

Metrology and Measurement Systems

Yearbook

2017

Volume

vol. 24

Issue

No 2

Authors

Keywords

sleep stage classification ; EEG signal ; power spectral density ; discrete wavelet transform ; empirical mode decomposition ; artificial neural network

Divisions of PAS

Nauki Techniczne

Coverage

229–240

Publisher

Polish Academy of Sciences Committee on Metrology and Scientific Instrumentation

Date

2017.06.30

Type

Artykuły / Articles

Identifier

DOI: 10.1515/mms-2017-0036 ; ISSN 2080-9050, e-ISSN 2300-1941

Source

Metrology and Measurement Systems; 2017; vol. 24; No 2; 229–240

References

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