An IoT Framework for Emotion Detection and Behavior Influence: Towards Improving the Quality of Life
Nada Asar 1.*, Mohamed Handosa1, M. Z. Rashad1
1Department of Computer Science, Faculty of Computers and Information, Mansoura University, Mansoura 35516, Egypt
Emails: Nada.Asar@hotmail.com; Handosa@mans.edu.eg; Magdi z2011@yahoo.com
Abstract
Accurate emotion detection is crucial for individuals facing communication barriers, yet existing approaches struggle with real-time limitations and information Individual privacy. This research presents a new IoT-based framework that integrates EEG and physiological signals from wearable sensors with deep learning models, including CNN, Decision Trees, SVM, KNN, and Naïve Bayes. Unlike traditional methods, our approach effectively mitigates data latency and sensor noise while ensuring compliance with GDPR and HIPAA standards. Experimental results demonstrate a validated accuracy of 99-100%, outperforming state-of-the-art models. These developments establish our framework as a game-changing instrument for affective computing applications, enhancing human-machine interaction and healthcare quality of life.
Keywords: Smart health; Human-machine interaction; Machine learning; Deep learning; Internet of things; Affect Detection; Emotion Detection