CVFeb 18

DressWild: Feed-Forward Pose-Agnostic Garment Sewing Pattern Generation from In-the-Wild Images

arXiv:2602.16502v11 citationsh-index: 15
Originality Highly original
AI Analysis

This addresses garment modeling and fabrication applications needing editable, simulation-ready garments from real-world images, representing a novel method for a known bottleneck.

The paper tackles the problem of generating editable sewing patterns and 3D garments from single in-the-wild images, which existing methods struggle with due to pose diversity or computational cost. The proposed DressWild method robustly recovers diverse patterns and 3D garments without multi-view inputs or iterative optimization, offering an efficient solution for garment simulation.

Recent advances in garment pattern generation have shown promising progress. However, existing feed-forward methods struggle with diverse poses and viewpoints, while optimization-based approaches are computationally expensive and difficult to scale. This paper focuses on sewing pattern generation for garment modeling and fabrication applications that demand editable, separable, and simulation-ready garments. We propose DressWild, a novel feed-forward pipeline that reconstructs physics-consistent 2D sewing patterns and the corresponding 3D garments from a single in-the-wild image. Given an input image, our method leverages vision-language models (VLMs) to normalize pose variations at the image level, then extract pose-aware, 3D-informed garment features. These features are fused through a transformer-based encoder and subsequently used to predict sewing pattern parameters, which can be directly applied to physical simulation, texture synthesis, and multi-layer virtual try-on. Extensive experiments demonstrate that our approach robustly recovers diverse sewing patterns and the corresponding 3D garments from in-the-wild images without requiring multi-view inputs or iterative optimization, offering an efficient and scalable solution for realistic garment simulation and animation.

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