ReWeaver: Towards Simulation-Ready and Topology-Accurate Garment Reconstruction
Ming Li, Hui Shan, Kai Zheng, Chentao Shen, Siyu Liu, Yanwei Fu, Zhen Chen, Xiangru Huang

TL;DR
ReWeaver is a new framework that reconstructs 3D garments with accurate topology and sewing patterns from few multi-view images, enabling better simulation and manipulation.
Contribution
It introduces a topology-aware reconstruction method and a large-scale dataset for training and evaluating 3D garment reconstruction from sparse views.
Findings
ReWeaver outperforms existing methods in topology accuracy.
ReWeaver achieves better geometry alignment with input images.
The dataset GCD-TS contains over 100,000 synthetic samples for training.
Abstract
High-quality 3D garment reconstruction plays a crucial role in mitigating the sim-to-real gap in applications such as digital avatars, virtual try-on and robotic manipulation. However, existing garment reconstruction methods typically rely on unstructured representations, such as 3D Gaussian Splats, struggling to provide accurate reconstructions of garment topology and sewing structures. As a result, the reconstructed outputs are often unsuitable for high-fidelity physical simulation. We propose ReWeaver, a novel framework for topology-accurate 3D garment and sewing pattern reconstruction from sparse multi-view RGB images. Given as few as four input views, ReWeaver predicts seams and panels as well as their connectivities in both the 2D UV space and the 3D space. The predicted seams and panels align precisely with the multi-view images, yielding structured 2D--3D garment representations…
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