Stress Level Detection using Machine Learning and Image Processing.

Autor: Hariharan, R., Valarmathi, K., Sriramkumar, R., Prasanth, G. Vairavap, Sankarapandian, S.
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Zdroj: Grenze International Journal of Engineering & Technology (GIJET); Jun2024, Vol. 10 Issue 2,Part 4, p5363-5366, 4p
Abstrakt: Stress, a ubiquitous part of modern life, greatly affects an individual’s mental and physical well- being. This work addresses the need for an efficient non-invasive system that can accurately detect stress levels in individuals. Leveraging advances in machine learning and simulation, this effort focuses on developing a sophisticated framework for facial expressionbased stress analysis. The proposed system aims to overcome the limitations of traditional stress assessment methods by using sufficient data recorded in human facial expressions. Combining sophisticated computer vision techniques, the system captures facial images and extracts complex emotional signals of varying levels of stress Machine learning algorithms play an important role in this task, enabling the system to recognize micro-patterns in stress-facial faces. The training process takes a large data set of labelled facial images to model complex stress-facial signals And, enables the power be easy to see and guess The integration of visualization and machine learning approaches contributes to the development of passive and objective stress assessment tools. The system’s ability to analyze and interpret these facial cues makes it easier to detect stress levels in real time, and provide timely intervention and support.The implications of this work extend to mental health policy, offering a new method for objectively measuring stress levels. The imagined system holds promise to be a valuable asset in clinical settings, workplaces, and everyday life, providing a means of active and human management. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index