Emotion Recognition in Older Adults with Quantum Machine Learning and Wearable Sensors
Journal:
arXiv
Published Date:
Jul 10, 2025
Abstract
We investigate the feasibility of inferring emotional states exclusively from
physiological signals, thereby presenting a privacy-preserving alternative to
conventional facial recognition techniques. We conduct a performance comparison
of classical machine learning algorithms and hybrid quantum machine learning
(QML) methods with a quantum kernel-based model. Our results indicate that the
quantum-enhanced SVM surpasses classical counterparts in classification
performance across all emotion categories, even when trained on limited
datasets. The F1 scores over all classes are over 80% with around a maximum of
36% improvement in the recall values. The integration of wearable sensor data
with quantum machine learning not only enhances accuracy and robustness but
also facilitates unobtrusive emotion recognition. This methodology holds
promise for populations with impaired communication abilities, such as
individuals with Alzheimer's Disease and Related Dementias (ADRD) and veterans
with Post-Traumatic Stress Disorder (PTSD). The findings establish an early
foundation for passive emotional monitoring in clinical and assisted living
conditions.