Enhancing Monocular 3D Hand Reconstruction with Learned Texture Priors

Published in WACV, 2026

  1. Full citation

    Karvounas, G., Kyriazis, N., Oikonomidis, I., Pavlakos, G., & Argyros, A. (2026, March). Enhancing Monocular 3D Hand Reconstruction with Learned Texture Priors. IEEE/CVF Winter Conference on Applications of Computer Vision (WACV 2026), Also Available at Corr, ArXiv.

    Abstract

    We revisit the role of texture in monocular 3D hand reconstruction, not as an afterthought for photorealism, but as a dense, spatially grounded cue that can actively support pose and shape estimation. Our observation is simple: even in high-performing models, the overlay between predicted hand geometry and image appearance is often imperfect, suggesting that texture alignment may be an underused supervisory signal. We propose a lightweight texture module that embeds per-pixel observations into UV texture space and enables a novel dense alignment loss between predicted and observed hand appearances. Our approach assumes access to a differentiable rendering pipeline and a model that maps images to 3D hand meshes with known topology, allowing us to back-project a textured hand onto the image and perform pixel-based alignment. The module is self-contained and easily pluggable into existing reconstruction pipelines. To isolate and highlight the value of texture-guided supervision, we augment HaMeR, a high-performing yet unadorned transformer architecture for 3D hand pose estimation. The resulting system improves both accuracy and realism, demonstrating the value of appearance-guided alignment in hand reconstruction.

    Presentation video

    Code

    The code can be found here.