A Quantitative Evaluation of the Expressivity of BMI, Pose and Gender in Body Embeddings for Recognition and Identification
Journal:
arXiv
Published Date:
Mar 9, 2025
Abstract
Person Re-identification (ReID) systems that match individuals across images
or video frames are essential in many real-world applications. However,
existing methods are often influenced by attributes such as gender, pose, and
body mass index (BMI), which vary in unconstrained settings and raise concerns
related to fairness and generalization. To address this, we extend the notion
of expressivity, defined as the mutual information between learned features and
specific attributes, using a secondary neural network to quantify how strongly
attributes are encoded. Applying this framework to three ReID models, we find
that BMI consistently shows the highest expressivity in the final layers,
indicating its dominant role in recognition. In the last attention layer,
attributes are ranked as BMI > Pitch > Gender > Yaw, revealing their relative
influences in representation learning. Expressivity values also evolve across
layers and training epochs, reflecting a dynamic encoding of attributes. These
findings demonstrate the central role of body attributes in ReID and establish
a principled approach for uncovering attribute driven correlations.