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Main Authors: Xu, Chongyang, Huang, Buzhen, Zhang, Chengfang, Feng, Ziliang, Wang, Yangang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.03836
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author Xu, Chongyang
Huang, Buzhen
Zhang, Chengfang
Feng, Ziliang
Wang, Yangang
author_facet Xu, Chongyang
Huang, Buzhen
Zhang, Chengfang
Feng, Ziliang
Wang, Yangang
contents Human mesh recovery can be approached using either regression-based or optimization-based methods. Regression models achieve high pose accuracy but struggle with model-to-image alignment due to the lack of explicit 2D-3D correspondences. In contrast, optimization-based methods align 3D models to 2D observations but are prone to local minima and depth ambiguity. In this work, we leverage large vision-language models (VLMs) to generate interactive body part descriptions, which serve as implicit constraints to enhance 3D perception and limit the optimization space. Specifically, we formulate monocular human mesh recovery as a distribution adaptation task by integrating both 2D observations and language descriptions. To bridge the gap between text and 3D pose signals, we first train a text encoder and a pose VQ-VAE, aligning texts to body poses in a shared latent space using contrastive learning. Subsequently, we employ a diffusion-based framework to refine the initial parameters guided by gradients derived from both 2D observations and text descriptions. Finally, the model can produce poses with accurate 3D perception and image consistency. Experimental results on multiple benchmarks validate its effectiveness. The code will be made publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2502_03836
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adapting Human Mesh Recovery with Vision-Language Feedback
Xu, Chongyang
Huang, Buzhen
Zhang, Chengfang
Feng, Ziliang
Wang, Yangang
Computer Vision and Pattern Recognition
Human mesh recovery can be approached using either regression-based or optimization-based methods. Regression models achieve high pose accuracy but struggle with model-to-image alignment due to the lack of explicit 2D-3D correspondences. In contrast, optimization-based methods align 3D models to 2D observations but are prone to local minima and depth ambiguity. In this work, we leverage large vision-language models (VLMs) to generate interactive body part descriptions, which serve as implicit constraints to enhance 3D perception and limit the optimization space. Specifically, we formulate monocular human mesh recovery as a distribution adaptation task by integrating both 2D observations and language descriptions. To bridge the gap between text and 3D pose signals, we first train a text encoder and a pose VQ-VAE, aligning texts to body poses in a shared latent space using contrastive learning. Subsequently, we employ a diffusion-based framework to refine the initial parameters guided by gradients derived from both 2D observations and text descriptions. Finally, the model can produce poses with accurate 3D perception and image consistency. Experimental results on multiple benchmarks validate its effectiveness. The code will be made publicly available.
title Adapting Human Mesh Recovery with Vision-Language Feedback
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2502.03836