GraphAU-Pain: Graph-based Action Unit Representation for Pain Intensity Estimation
Journal:
arXiv
Published Date:
May 26, 2025
Abstract
Understanding pain-related facial behaviors is essential for digital
healthcare in terms of effective monitoring, assisted diagnostics, and
treatment planning, particularly for patients unable to communicate verbally.
Existing data-driven methods of detecting pain from facial expressions are
limited due to interpretability and severity quantification. To this end, we
propose GraphAU-Pain, leveraging a graph-based framework to model facial Action
Units (AUs) and their interrelationships for pain intensity estimation. AUs are
represented as graph nodes, with co-occurrence relationships as edges, enabling
a more expressive depiction of pain-related facial behaviors. By utilizing a
relational graph neural network, our framework offers improved interpretability
and significant performance gains. Experiments conducted on the publicly
available UNBC dataset demonstrate the effectiveness of the GraphAU-Pain,
achieving an F1-score of 66.21% and accuracy of 87.61% in pain intensity
estimation.