ClothHMR: 3D Mesh Recovery of Humans in Diverse Clothing from Single Image
Yunqi Gao, Leyuan Liu, Yuhan Li, Changxin Gao, Yuanyuan Liu, Jingying Chen

TL;DR
ClothHMR introduces a novel approach for 3D human mesh recovery from single images that effectively handles diverse clothing by tailoring garments and leveraging foundational visual models, outperforming existing methods.
Contribution
The paper presents ClothHMR, a new method combining clothing tailoring and FHVM-based mesh recovery to improve accuracy in estimating 3D human shapes in varied clothing.
Findings
Outperforms state-of-the-art methods on benchmark datasets.
Accurately estimates body shape and pose in diverse clothing.
Enables real-world applications like online fashion shopping.
Abstract
With 3D data rapidly emerging as an important form of multimedia information, 3D human mesh recovery technology has also advanced accordingly. However, current methods mainly focus on handling humans wearing tight clothing and perform poorly when estimating body shapes and poses under diverse clothing, especially loose garments. To this end, we make two key insights: (1) tailoring clothing to fit the human body can mitigate the adverse impact of clothing on 3D human mesh recovery, and (2) utilizing human visual information from large foundational models can enhance the generalization ability of the estimation. Based on these insights, we propose ClothHMR, to accurately recover 3D meshes of humans in diverse clothing. ClothHMR primarily consists of two modules: clothing tailoring (CT) and FHVM-based mesh recovering (MR). The CT module employs body semantic estimation and body edge…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Pose and Action Recognition · Generative Adversarial Networks and Image Synthesis
