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Egocentric Whole-Body Human Mesh Recovery with Prior-Guided Learning

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abstract

Egocentric human mesh recovery (HMR) from monocular head-mounted cameras is increasingly important for AR/VR applications, but remains challenging due to the lack of reliable ground-truth (GT) annotations based on parametric human body models such as SMPL and SMPL-X for real egocentric images. Existing egocentric HMR methods typically rely on pseudo-GT and focus on body pose estimation, which limits their ability to recover fine-grained whole-body details such as hands and face. We study egocentric whole-body human mesh recovery and propose a prior-guided learning framework that reconstructs whole-body meshes from a single egocentric image. We construct more accurate optimization-based pseudo-GT aligned with 3D joint supervision, and leverage multiple priors by adapting an exocentric HMR foundation model together with a diffusion-based pose prior. A deterministic undistortion module is further adopted to handle fisheye distortions in egocentric images. Experiments across multiple egocentric benchmarks demonstrate improved whole-body reconstruction compared to state-of-the-art methods, and show that our optimization-based pseudo-GT is substantially more accurate than existing regression-based pseudo-GT. To facilitate reproducibility, the code and dataset annotations are publicly available at https://github.com/naso06/EgoSMPLX.

fields

cs.CV 1

years

2026 1

verdicts

UNVERDICTED 1

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  • Egocentric Whole-Body Human Mesh Recovery with Prior-Guided Learning cs.CV · 2026-05-09 · unverdicted · none · ref 1 · internal anchor

    A framework combining optimization-based pseudo ground truth, an adapted exocentric foundation model, and a diffusion pose prior improves whole-body mesh recovery from egocentric fisheye images over prior methods.