Improving Emotion Recognition Accuracy with Personalized Clustering
Laura Gutierrez-Martin (1), Celia Lopez Ongil (1, 2), Jose M., Lanza-Gutierrez (3), and Jose A. Miranda Calero (4) ((1) Department of, Electronics, Universidad Carlos III de Madrid, Spain, (2) Gender Studies, Institute, Universidad Carlos III de Madrid, Spain, (3) Department of

TL;DR
This paper introduces a personalized clustering methodology for emotion recognition that improves accuracy and reduces variability by tailoring models to groups of individuals with similar emotional responses, suitable for real-time applications.
Contribution
The work presents a novel clustering approach for creating personalized AI models for emotion recognition, enhancing accuracy and consistency over general models.
Findings
4% increase in accuracy over general models
3% improvement in F1-score
14% reduction in variability
Abstract
Emotion recognition through artificial intelligence and smart sensing of physical and physiological signals (Affective Computing) is achieving very interesting results in terms of accuracy, inference times, and user-independent models. In this sense, there are applications related to the safety and well-being of people (sexual aggressions, gender-based violence, children and elderly abuse, mental health, etc.) that require even more improvements. Emotion detection should be done with fast, discrete, and non-luxurious systems working in real-time and real life (wearable devices, wireless communications, battery-powered). Furthermore, emotional reactions to violence are not equal in all people. Then, large general models cannot be applied to a multiuser system for people protection, and customized and simple AI models would be welcomed by health and social workers and law enforcement…
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Taxonomy
TopicsEmotion and Mood Recognition
