Abstract
Differences in EEG sleep spindles constitute a promising indicator of sleep disorders. In this paper Sleep Spindles are extracted from real EEG data using a triple (Short Time Fourier Transform-STFT; Wavelet Transform-WT; Wave Morphology for Spindle Detection-WMSD) algorithm. After the detection, an Autoregressive–moving-average (ARMA) model is applied to each Spindle and finally the ARMA’s coefficients’ mean is computed in order to find a model for each patient. Regarding only the position of real poles and zeros, it is possible to distinguish normal from Parasomnia REM subjects.
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Costa, J. C. D., Ortigueira, M. D., Batista, A., & Paiva, T. (2013). ARMA modelling for sleep disorders diagnose. IFIP Advances in Information and Communication Technology, 394, 271–278. https://doi.org/10.1007/978-3-642-37291-9_29
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