GarmentCodeData: A Dataset of 3D Made-to-Measure Garments With Sewing Patterns

Samples from GarmentCodeData showcasing the breadth of represented garment styles and body shapes.

Abstract

Recent research interest in learning-based processing of garments, from virtual fitting to generation and reconstruction, stumbles on a scarcity of high-quality public data in the domain. We contribute to resolving this need by presenting the first large-scale synthetic dataset of 3D made-to-measure garments with sewing patterns, as well as its generation pipeline. GarmentCodeData contains 115,000 data points that cover a variety of designs in many common garment categories: tops, shirts, dresses, jumpsuits, skirts, pants, etc., fitted to a variety of body shapes sampled from a custom statistical body model based on CAESAR, as well as a standard reference body shape, applying three different textile materials. To enable the creation of datasets of such complexity, we introduce a set of algorithms for automatically taking tailor’s measures on sampled body shapes, sampling strategies for sewing pattern design, and propose an automatic, open-source 3D garment draping pipeline based on a fast XPBD simulator, while contributing several solutions for collision resolution and drape correctness to enable scalability.

[Sept 4th, 2024] GarmentCodeData version update. See more details in documentation for v2.

Publication
European Conference on Computer Vision 2024
Maria Korosteleva
Maria Korosteleva
Postdoctoral Researcher

My research interests include Geometry Processing, Artifical Intelligence, and their applications to Virtual Garments