Biomedical Engineering
Vol. 40 No. 09 (2025): Proceedings of the Faculty of Technical Sciences
ESTIMATION OF STRESS LEVEL IN HUMANS USING MACHINE LEARNING METHODS
Abstract
This thesis presents the concept of applying machine learning methods to estimate human stress levels. Stress, as a response of the organism to environmental changes, manifests itself through changes in various physiological parameters. These biomarkers were used as inputs in a machine learning model, which predicted the stress level based on defined class labels.
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