Sleep Onset Detection Using EEG

نویسنده

  • K. Šušmáková
چکیده

This study was concentrated on changes of complexity of EEG signals during the sleep onset process and the comparison of sleep onset with relaxation. The ability of two complexity measures correlation dimension D2 and fractal exponent γ to distinguish these slightly distinct states was examined. Both measures confirmed decreased complexity of EEG signals during sleep onset process, on the contrary the complexity during the relaxation slightly increased.

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تاریخ انتشار 2006