English

ClothCombo: Modeling Inter-Cloth Interaction for Draping Multi-Layered Clothes

Computer Vision and Pattern Recognition 2023-12-01 v2 Graphics

Abstract

We present ClothCombo, a pipeline to drape arbitrary combinations of clothes on 3D human models with varying body shapes and poses. While existing learning-based approaches for draping clothes have shown promising results, multi-layered clothing remains challenging as it is non-trivial to model inter-cloth interaction. To this end, our method utilizes a GNN-based network to efficiently model the interaction between clothes in different layers, thus enabling multi-layered clothing. Specifically, we first create feature embedding for each cloth using a topology-agnostic network. Then, the draping network deforms all clothes to fit the target body shape and pose without considering inter-cloth interaction. Lastly, the untangling network predicts the per-vertex displacements in a way that resolves interpenetration between clothes. In experiments, the proposed model demonstrates strong performance in complex multi-layered scenarios. Being agnostic to cloth topology, our method can be readily used for layered virtual try-on of real clothes in diverse poses and combinations of clothes.

Keywords

Cite

@article{arxiv.2304.03492,
  title  = {ClothCombo: Modeling Inter-Cloth Interaction for Draping Multi-Layered Clothes},
  author = {Dohae Lee and Hyun Kang and In-Kwon Lee},
  journal= {arXiv preprint arXiv:2304.03492},
  year   = {2023}
}
R2 v1 2026-06-28T09:54:00.519Z