2D-3D Attention and Entropy for Pose Robust 2D Facial Recognition
Journal:
arXiv
Published Date:
May 14, 2025
Abstract
Despite recent advances in facial recognition, there remains a fundamental
issue concerning degradations in performance due to substantial perspective
(pose) differences between enrollment and query (probe) imagery. Therefore, we
propose a novel domain adaptive framework to facilitate improved performances
across large discrepancies in pose by enabling image-based (2D) representations
to infer properties of inherently pose invariant point cloud (3D)
representations. Specifically, our proposed framework achieves better pose
invariance by using (1) a shared (joint) attention mapping to emphasize common
patterns that are most correlated between 2D facial images and 3D facial data
and (2) a joint entropy regularizing loss to promote better
consistency$\unicode{x2014}$enhancing correlations among the intersecting 2D
and 3D representations$\unicode{x2014}$by leveraging both attention maps. This
framework is evaluated on FaceScape and ARL-VTF datasets, where it outperforms
competitive methods by achieving profile (90$\unicode{x00b0}$$\unicode{x002b}$)
TAR @ 1$\unicode{x0025}$ FAR improvements of at least 7.1$\unicode{x0025}$ and
1.57$\unicode{x0025}$, respectively.