TL;DR
This paper introduces FIT, a large-scale dataset with precise measurements for fit-aware virtual try-on, enabling more realistic and size-accurate garment visualization.
Contribution
We created the first large-scale dataset with detailed fit information and developed a synthetic data generation pipeline for training fit-aware VTO models.
Findings
Our dataset enables training of fit-aware VTO models with improved accuracy.
The baseline model trained on FIT achieves state-of-the-art results in fit realism.
Synthetic data generation effectively captures realistic garment fit and appearance.
Abstract
Given a person and a garment image, virtual try-on (VTO) aims to synthesize a realistic image of the person wearing the garment, while preserving their original pose and identity. Although recent VTO methods excel at visualizing garment appearance, they largely overlook a crucial aspect of the try-on experience: the accuracy of garment fit -- for example, depicting how an extra-large shirt looks on an extra-small person. A key obstacle is the absence of datasets that provide precise garment and body size information, particularly for "ill-fit" cases, where garments are significantly too large or too small. Consequently, current VTO methods default to generating well-fitted results regardless of the garment or person size. In this paper, we take the first steps towards solving this open problem. We introduce FIT (Fit-Inclusive Try-on), a large-scale VTO dataset comprising over 1.13M…
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