TL;DR
This paper introduces NGL, a domain-specific language that enables training-free extraction of sewing patterns from images using vision-language models, improving generalization to real-world, multi-layer garments.
Contribution
We propose NGL, a novel language for representing garments, and a training-free pipeline leveraging VLMs to generate sewing patterns from in-the-wild images.
Findings
Achieves state-of-the-art geometry metrics on multiple datasets.
Recovers multi-layer outfits, unlike existing methods.
Preferred in human and GPT evaluations.
Abstract
Estimating sewing patterns from images is a practical approach for creating high-quality 3D garments, but it remains challenging due to the scarcity of paired real-world image and sewing-pattern data. Existing methods address this limitation by training vision-language models (VLMs) to learn low-level sewing-pattern representations from synthetic garments sampled from parametric garment models. However, they often struggle to generalize to in-the-wild images, fail to capture real-world correlations between garment parts, and are restricted to single-layer outfits. In contrast, we observe that VLMs are effective at describing garments in natural language, but mapping these descriptions into valid sewing patterns remains difficult. To bridge this gap, we propose NGL (Natural Garment Language), a novel domain-specific language that represents garments in terms aligned with VLMs' natural…
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Taxonomy
Topics3D Shape Modeling and Analysis · Generative Adversarial Networks and Image Synthesis · Textile materials and evaluations
