M. Zolubak, Barbara Grochowicz, Mariusz Pelc, Aleksandra Kawala-Sterniuk
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Stress analysis recorded in the EEG signal based on mathematical markers
Stress is an increasingly common problem. Thanks to the use of various mathematical methods, it can be described mathematically based on the EEG signal. Generally, the stress in mathematical analysis can be divided into several models. To determine the variability in the stress-related EEG signal, the periodograms used for the overall assessment are checked.