Reproducible Physiological Features in Affective Computing: A Preliminary Analysis on Arousal Modeling
By: Andrea Gargano , Jasin Machkour , Mimma Nardelli and more
Potential Business Impact:
Finds body signals that show how excited you feel.
In Affective Computing, a key challenge lies in reliably linking subjective emotional experiences with objective physiological markers. This preliminary study addresses the issue of reproducibility by identifying physiological features from cardiovascular and electrodermal signals that are associated with continuous self-reports of arousal levels. Using the Continuously Annotated Signal of Emotion dataset, we analyzed 164 features extracted from cardiac and electrodermal signals of 30 participants exposed to short emotion-evoking videos. Feature selection was performed using the Terminating-Random Experiments (T-Rex) method, which performs variable selection systematically controlling a user-defined target False Discovery Rate. Remarkably, among all candidate features, only two electrodermal-derived features exhibited reproducible and statistically significant associations with arousal, achieving a 100\% confirmation rate. These results highlight the necessity of rigorous reproducibility assessments in physiological features selection, an aspect often overlooked in Affective Computing. Our approach is particularly promising for applications in safety-critical environments requiring trustworthy and reliable white box models, such as mental disorder recognition and human-robot interaction systems.
Similar Papers
Long-Term Variability in Physiological-Arousal Relationships for Robust Emotion Estimation
Human-Computer Interaction
Helps computers understand feelings even when they change.
REFS: Robust EEG feature selection with missing multi-dimensional annotation for emotion recognition
Human-Computer Interaction
Helps computers understand your feelings from brain waves.
Emotion Recognition with Minimal Wearable Sensing: Multi-domain Feature, Hybrid Feature Selection, and Personalized vs. Generalized Ensemble Model Analysis
Human-Computer Interaction
Detects sad feelings from your heartbeat.