Age-Inclusive 3D Human Mesh Recovery for Action-Preserving Data Anonymization

AI in healthcare
Published: arXiv: 2512.05259v1
Authors

Georgios Chatzichristodoulou Niki Efthymiou Panagiotis Filntisis Georgios Pavlakos Petros Maragos

Abstract

While three-dimensional (3D) shape and pose estimation is a highly researched area that has yielded significant advances, the resulting methods, despite performing well for the adult population, generally fail to generalize effectively to children and infants. This paper addresses this challenge by introducing AionHMR, a comprehensive framework designed to bridge this domain gap. We propose an optimization-based method that extends a top-performing model by incorporating the SMPL-A body model, enabling the concurrent and accurate modeling of adults, children, and infants. Leveraging this approach, we generated pseudo-ground-truth annotations for publicly available child and infant image databases. Using these new training data, we then developed and trained a specialized transformer-based deep learning model capable of real-time 3D age-inclusive human reconstruction. Extensive experiments demonstrate that our methods significantly improve shape and pose estimation for children and infants without compromising accuracy on adults. Importantly, our reconstructed meshes serve as privacy-preserving substitutes for raw images, retaining essential action, pose, and geometry information while enabling anonymized datasets release. As a demonstration, we introduce the 3D-BabyRobot dataset, a collection of action-preserving 3D reconstructions of children interacting with robots. This work bridges a crucial domain gap and establishes a foundation for inclusive, privacy-aware, and age-diverse 3D human modeling.

Paper Summary

Problem
Estimating 3D human shape and pose from a single image is a challenging task, especially when it comes to children and infants. Current methods are highly successful for adults but fail to generalize effectively to younger populations due to a lack of public data and the difficulty in acquiring comparable child data.
Key Innovation
This paper proposes a new framework called AionHMR, which is designed to bridge the domain gap in 3D human shape and pose estimation for children and infants. AionHMR is a comprehensive framework that incorporates the SMPL-A body model and uses optimization-based methods to generate pseudo-ground-truth annotations from images. This approach enables the creation of datasets to train a specialized transformer-based deep learning model that can accurately model children and infants.
Practical Impact
The AionHMR framework has several practical implications. Firstly, it enables the creation of inclusive and age-diverse 3D human models, which can be used in various applications such as health, sports, and animation. Secondly, it provides a foundation for privacy-aware and action-preserving data anonymization, which is essential for sensitive datasets like those involving children and infants. Finally, the 3D-BabyRobot dataset, a collection of action-preserving 3D reconstructions of children interacting with robots, demonstrates the potential of AionHMR in real-world applications.
Analogy / Intuitive Explanation
Imagine trying to fit a puzzle piece into a puzzle, but the puzzle piece is constantly changing shape and size. That's roughly what's happening when we try to estimate 3D human shape and pose from a single image, especially when it comes to children and infants. AionHMR is like a specialized tool that helps us adjust the puzzle piece to fit perfectly, enabling us to create accurate and inclusive 3D human models.
Paper Information
Categories:
cs.CV
Published Date:

arXiv ID:

2512.05259v1

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