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AnthroNet: Conditional Generation of Humans via Anthropometrics

Authors :
Picetti, Francesco
Deshpande, Shrinath
Leban, Jonathan
Shahtalebi, Soroosh
Patel, Jay
Jing, Peifeng
Wang, Chunpu
Metze III, Charles
Sun, Cameron
Laidlaw, Cera
Warren, James
Huynh, Kathy
Page, River
Hogins, Jonathan
Crespi, Adam
Ganguly, Sujoy
Ebadi, Salehe Erfanian
Publication Year :
2023

Abstract

We present a novel human body model formulated by an extensive set of anthropocentric measurements, which is capable of generating a wide range of human body shapes and poses. The proposed model enables direct modeling of specific human identities through a deep generative architecture, which can produce humans in any arbitrary pose. It is the first of its kind to have been trained end-to-end using only synthetically generated data, which not only provides highly accurate human mesh representations but also allows for precise anthropometry of the body. Moreover, using a highly diverse animation library, we articulated our synthetic humans' body and hands to maximize the diversity of the learnable priors for model training. Our model was trained on a dataset of $100k$ procedurally-generated posed human meshes and their corresponding anthropometric measurements. Our synthetic data generator can be used to generate millions of unique human identities and poses for non-commercial academic research purposes.<br />Comment: AnthroNet's Unity data generator source code is available at: https://unity-technologies.github.io/AnthroNet/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.03812
Document Type :
Working Paper