IJSHR

International Journal of Science and Healthcare Research

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Short Communication

Year: 2023 | Month: April-June | Volume: 8 | Issue: 2 | Pages: 307-311

DOI: https://doi.org/10.52403/ijshr.20230239

Stress Detection Using Machine Learning

Rohini Hanchate1, Harshal Narute2, Siddharam Shavage3, Karan Tiwari4

1Prof. Department of Computer, 2Department of Computer,
3Department of Computer, 4Department of Computer,
Nutan Maharashtra institute of Engineering and Technology, Savitribai Phule Pune University, India

Corresponding Author: Rohini Hanchate

ABSTRACT

Stress management systems are essential to identify and address stress levels that can disrupt our socioeconomic functioning. According to the World Health Organization (WHO), one in four people experience stress, which can result in mental and socioeconomic issues, poor work relationships, and depression, and in severe cases, suicide. Counselling is crucial to help people cope with stress, and while stress cannot be avoided, preventive measures can be taken to mitigate its effects. Currently, only medical and physiological experts can determine whether someone is experiencing stress. Traditional stress detection methods rely on self-reported answers, which can be unreliable. Automated stress detection can minimize health risks and improve societal welfare. Therefore, there is a need for a scientific tool that can automate stress detection using physiological signals. Stress detection is an important social contribution that potential to improve quality of life. As IT industries bring new technologies and products to the market, stress levels in employees are also increasing. While some organizations offer mental health services to their employees, more needs to be done to address this issue.

Keywords: Machine Learning, Stress Detection, Haar cascade algorithm, Convolutional Neural Network

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