학술논문

Real Time Mental Health Monitoring System using Machine Learning
Document Type
Conference
Source
2024 Second International Conference on Intelligent Cyber Physical Systems and Internet of Things (ICoICI) Intelligent Cyber Physical Systems and Internet of Things (ICoICI), 2024 Second International Conference on. :806-811 Aug, 2024
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Accuracy
Mental health
Machine learning
Transforms
Real-time systems
Hardware
Skin
Sensor systems
Sensors
Monitoring
Arduino
sensor
GSR (Galvanic Skin Response)
Language
Abstract
Recent advancements in mobile health devices have spurred interest in leveraging them for monitoring mental health symptoms like stress. This project proposes an innovative system utilizing Arduino UNO and various sensors to detect physiological signs of stress. Machine learning techniques are integrated to enhance stress detection accuracy, despite the microcontroller's computational constraints. Simplified algorithms like decision trees offer lightweight solutions suitable for Arduino's capabilities, enabling proactive intervention strategies in mental health management. We have achieved the highest accuracy of 96.6% for stress detection and also the proposed hardware module effectively identifies mental health conditions.