Wearing the Same Outfit in Different Ways -- A Controllable Virtual Try-on Method
Kedan Li, Jeffrey Zhang, Shao-Yu Chang, David Forsyth

TL;DR
This paper introduces a controllable virtual try-on method that allows users to manipulate how garments are worn while preserving their original details, enabling realistic and customizable outfit visualizations.
Contribution
It presents an instance-independent editing approach for garment drape control, combining warping and generation techniques for high-quality, customizable outfit visualization.
Findings
Produces state-of-the-art quality images
Enables flexible garment styling options
Allows automatic application of edits to large garment collections
Abstract
An outfit visualization method generates an image of a person wearing real garments from images of those garments. Current methods can produce images that look realistic and preserve garment identity, captured in details such as collar, cuffs, texture, hem, and sleeve length. However, no current method can both control how the garment is worn -- including tuck or untuck, opened or closed, high or low on the waist, etc.. -- and generate realistic images that accurately preserve the properties of the original garment. We describe an outfit visualization method that controls drape while preserving garment identity. Our system allows instance independent editing of garment drape, which means a user can construct an edit (e.g. tucking a shirt in a specific way) that can be applied to all shirts in a garment collection. Garment detail is preserved by relying on a warping procedure to place…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · 3D Shape Modeling and Analysis · Advanced Vision and Imaging
