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Autores principales: Sun, Zhiyao, Wen, Yu-Hui, Fang, Ho-Jui, Ye, Sheng, Lin, Matthieu, Lv, Tian, Liu, Yong-Jin
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2503.12052
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author Sun, Zhiyao
Wen, Yu-Hui
Fang, Ho-Jui
Ye, Sheng
Lin, Matthieu
Lv, Tian
Liu, Yong-Jin
author_facet Sun, Zhiyao
Wen, Yu-Hui
Fang, Ho-Jui
Ye, Sheng
Lin, Matthieu
Lv, Tian
Liu, Yong-Jin
contents Creating detailed 3D human avatars with fitted garments traditionally requires specialized expertise and labor-intensive workflows. While recent advances in generative AI have enabled text-to-3D human and clothing synthesis, existing methods fall short in offering accessible, integrated pipelines for generating CG-ready 3D avatars with physically compatible outfits; here we use the term CG-ready for models following a technical aesthetic common in computer graphics (CG) and adopt standard CG polygonal meshes and strands representations (rather than neural representations like NeRF and 3DGS) that can be directly integrated into conventional CG pipelines and support downstream tasks such as physical simulation. To bridge this gap, we introduce Tailor, an integrated text-to-3D framework that generates high-fidelity, customizable 3D avatars dressed in simulation-ready garments. Tailor consists of three stages. (1) Seman tic Parsing: we employ a large language model to interpret textual descriptions and translate them into parameterized human avatars and semantically matched garment templates. (2) Geometry-Aware Garment Generation: we propose topology-preserving deformation with novel geometric losses to generate body-aligned garments under text control. (3) Consistent Texture Synthesis: we propose a novel multi-view diffusion process optimized for garment texturing, which enforces view consistency, preserves photorealistic details, and optionally supports symmetric texture generation common in garments. Through comprehensive quantitative and qualitative evaluations, we demonstrate that Tailor outperforms state-of-the-art methods in fidelity, usability, and diversity. Our code will be released for academic use. Project page: https://human-tailor.github.io
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spellingShingle A Text-to-3D Framework for Joint Generation of CG-Ready Humans and Compatible Garments
Sun, Zhiyao
Wen, Yu-Hui
Fang, Ho-Jui
Ye, Sheng
Lin, Matthieu
Lv, Tian
Liu, Yong-Jin
Computer Vision and Pattern Recognition
Graphics
Creating detailed 3D human avatars with fitted garments traditionally requires specialized expertise and labor-intensive workflows. While recent advances in generative AI have enabled text-to-3D human and clothing synthesis, existing methods fall short in offering accessible, integrated pipelines for generating CG-ready 3D avatars with physically compatible outfits; here we use the term CG-ready for models following a technical aesthetic common in computer graphics (CG) and adopt standard CG polygonal meshes and strands representations (rather than neural representations like NeRF and 3DGS) that can be directly integrated into conventional CG pipelines and support downstream tasks such as physical simulation. To bridge this gap, we introduce Tailor, an integrated text-to-3D framework that generates high-fidelity, customizable 3D avatars dressed in simulation-ready garments. Tailor consists of three stages. (1) Seman tic Parsing: we employ a large language model to interpret textual descriptions and translate them into parameterized human avatars and semantically matched garment templates. (2) Geometry-Aware Garment Generation: we propose topology-preserving deformation with novel geometric losses to generate body-aligned garments under text control. (3) Consistent Texture Synthesis: we propose a novel multi-view diffusion process optimized for garment texturing, which enforces view consistency, preserves photorealistic details, and optionally supports symmetric texture generation common in garments. Through comprehensive quantitative and qualitative evaluations, we demonstrate that Tailor outperforms state-of-the-art methods in fidelity, usability, and diversity. Our code will be released for academic use. Project page: https://human-tailor.github.io
title A Text-to-3D Framework for Joint Generation of CG-Ready Humans and Compatible Garments
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2503.12052