English

MMTryon: Multi-Modal Multi-Reference Control for High-Quality Fashion Generation

Computer Vision and Pattern Recognition 2024-11-21 v4

Abstract

This paper introduces MMTryon, a multi-modal multi-reference VIrtual Try-ON (VITON) framework, which can generate high-quality compositional try-on results by taking a text instruction and multiple garment images as inputs. Our MMTryon addresses three problems overlooked in prior literature: 1) Support of multiple try-on items. Existing methods are commonly designed for single-item try-on tasks (e.g., upper/lower garments, dresses). 2)Specification of dressing style. Existing methods are unable to customize dressing styles based on instructions (e.g., zipped/unzipped, tuck-in/tuck-out, etc.) 3) Segmentation Dependency. They further heavily rely on category-specific segmentation models to identify the replacement regions, with segmentation errors directly leading to significant artifacts in the try-on results. To address the first two issues, our MMTryon introduces a novel multi-modality and multi-reference attention mechanism to combine the garment information from reference images and dressing-style information from text instructions. Besides, to remove the segmentation dependency, MMTryon uses a parsing-free garment encoder and leverages a novel scalable data generation pipeline to convert existing VITON datasets to a form that allows MMTryon to be trained without requiring any explicit segmentation. Extensive experiments on high-resolution benchmarks and in-the-wild test sets demonstrate MMTryon's superiority over existing SOTA methods both qualitatively and quantitatively. MMTryon's impressive performance on multi-item and style-controllable virtual try-on scenarios and its ability to try on any outfit in a large variety of scenarios from any source image, opens up a new avenue for future investigation in the fashion community.

Keywords

Cite

@article{arxiv.2405.00448,
  title  = {MMTryon: Multi-Modal Multi-Reference Control for High-Quality Fashion Generation},
  author = {Xujie Zhang and Ente Lin and Xiu Li and Yuxuan Luo and Michael Kampffmeyer and Xin Dong and Xiaodan Liang},
  journal= {arXiv preprint arXiv:2405.00448},
  year   = {2024}
}
R2 v1 2026-06-28T16:12:39.690Z