Stress Detection Using PPG Signal and Combined Deep CNN-MLP Network
- URL: http://arxiv.org/abs/2410.07911v1
- Date: Thu, 10 Oct 2024 13:38:55 GMT
- Title: Stress Detection Using PPG Signal and Combined Deep CNN-MLP Network
- Authors: Yasin Hasanpoor, Koorosh Motaman, Bahram Tarvirdizadeh, Khalil Alipour, Mohammad Ghamari,
- Abstract summary: This research work takes advantage of PPG signals to detect stress events.
The PPG signals used in this work are collected from one of the newest publicly available datasets named as UBFC-Phys.
The results obtained from the proposed model indicate that stress can be detected with an accuracy of approximately 82 percent.
- Score: 0.20971479389679332
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Stress has become a fact in people's lives. It has a significant effect on the function of body systems and many key systems of the body including respiratory, cardiovascular, and even reproductive systems are impacted by stress. It can be very helpful to detect stress episodes in early steps of its appearance to avoid damages it can cause to body systems. Using physiological signals can be useful for stress detection as they reflect very important information about the human body. PPG signal due to its advantages is one of the mostly used signal in this field. In this research work, we take advantage of PPG signals to detect stress events. The PPG signals used in this work are collected from one of the newest publicly available datasets named as UBFC-Phys and a model is developed by using CNN-MLP deep learning algorithm. The results obtained from the proposed model indicate that stress can be detected with an accuracy of approximately 82 percent.
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