Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

ETCH: Generalizing Body Fitting to Clothed Humans via Equivariant Tightness

About

Fitting a body to a 3D clothed human point cloud is a common yet challenging task. Traditional optimization-based approaches use multi-stage pipelines that are sensitive to pose initialization, while recent learning-based methods often struggle with generalization across diverse poses and garment types. We propose Equivariant Tightness Fitting for Clothed Humans, or ETCH, a novel pipeline that estimates cloth-to-body surface mapping through locally approximate SE(3) equivariance, encoding tightness as displacement vectors from the cloth surface to the underlying body. Following this mapping, pose-invariant body features regress sparse body markers, simplifying clothed human fitting into an inner-body marker fitting task. Extensive experiments on CAPE and 4D-Dress show that ETCH significantly outperforms state-of-the-art methods -- both tightness-agnostic and tightness-aware -- in body fitting accuracy on loose clothing (16.7% ~ 69.5%) and shape accuracy (average 49.9%). Our equivariant tightness design can even reduce directional errors by (67.2% ~ 89.8%) in one-shot (or out-of-distribution) settings (~ 1% data). Qualitative results demonstrate strong generalization of ETCH, regardless of challenging poses, unseen shapes, loose clothing, and non-rigid dynamics. We will release the code and models soon for research purposes at https://boqian-li.github.io/ETCH/.

Boqian Li, Haiwen Feng, Zeyu Cai, Michael J. Black, Yuliang Xiu• 2025

Related benchmarks

TaskDatasetResultRank
3D Human Body Reconstruction4D-DRESS
V2V Error (All)3.072
6
3D Human Mesh ReconstructionBEDLAM 2.0 (OOD)
V2V (mm)4.136
6
3D Human Body ReconstructionCAPE
V2V Error (All Regions)2.202
6
Showing 3 of 3 rows

Other info

Follow for update