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Classification of Brainwaves for Sleep Stages by High-Dimensional FFT Features from EEG Signals

Mera Kartika Delimayanti, Bedy Purnama, Ngoc Giang Nguyen, Mohammad Reza Faisal, Kunti Robiatul Mahmudah, Fatma Indriani, Mamoru Kubo, Kenji Satou

2020Applied Sciences79 citationsDOIOpen Access PDF

Abstract

Manual classification of sleep stage is a time-consuming but necessary step in the diagnosis and treatment of sleep disorders, and its automation has been an area of active study. The previous works have shown that low dimensional fast Fourier transform (FFT) features and many machine learning algorithms have been applied. In this paper, we demonstrate utilization of features extracted from EEG signals via FFT to improve the performance of automated sleep stage classification through machine learning methods. Unlike previous works using FFT, we incorporated thousands of FFT features in order to classify the sleep stages into 2–6 classes. Using the expanded version of Sleep-EDF dataset with 61 recordings, our method outperformed other state-of-the art methods. This result indicates that high dimensional FFT features in combination with a simple feature selection is effective for the improvement of automated sleep stage classification.

Topics & Concepts

Fast Fourier transformComputer scienceSleep (system call)ElectroencephalographyArtificial intelligenceSleep StagesSpeech recognitionFeature selectionFeature (linguistics)Pattern recognition (psychology)AlgorithmPsychologyPolysomnographyNeuroscienceLinguisticsPhilosophyOperating systemEEG and Brain-Computer InterfacesSleep and Wakefulness ResearchSleep and Work-Related Fatigue