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Main Authors: Li, Liuzhuozheng, Gong, Yue, Liu, Shanyuan, Jiang, Dengyang, Wang, Zanyi, Cheng, Bo, Ma, Yuhang, Wu, Leibucha, Leng, Dawei, Yin, Yuhui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.00956
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author Li, Liuzhuozheng
Gong, Yue
Liu, Shanyuan
Jiang, Dengyang
Wang, Zanyi
Cheng, Bo
Ma, Yuhang
Wu, Leibucha
Leng, Dawei
Yin, Yuhui
author_facet Li, Liuzhuozheng
Gong, Yue
Liu, Shanyuan
Jiang, Dengyang
Wang, Zanyi
Cheng, Bo
Ma, Yuhang
Wu, Leibucha
Leng, Dawei
Yin, Yuhui
contents We introduce RefTon, a flux-based person-to-person virtual try-on framework that enhances garment realism through unpaired visual references. Unlike conventional approaches that rely on complex auxiliary inputs such as body parsing and warped mask or require finely designed extract branches to process various input conditions, RefTon streamlines the process by directly generating try-on results from a source image and a target garment, without the need for structural guidance or auxiliary components to handle diverse inputs. Moreover, inspired by human clothing selection behavior, RefTon leverages additional reference images (the target garment worn on different individuals) to provide powerful guidance for refining texture alignment and maintaining the garment details. To enable this capability, we built a dataset containing unpaired reference images for training. Extensive experiments on public benchmarks demonstrate that RefTon achieves competitive or superior performance compared to state-of-the-art methods, while maintaining a simple and efficient person-to-person design.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RefTon: Reference person shot assist virtual Try-on
Li, Liuzhuozheng
Gong, Yue
Liu, Shanyuan
Jiang, Dengyang
Wang, Zanyi
Cheng, Bo
Ma, Yuhang
Wu, Leibucha
Leng, Dawei
Yin, Yuhui
Computer Vision and Pattern Recognition
We introduce RefTon, a flux-based person-to-person virtual try-on framework that enhances garment realism through unpaired visual references. Unlike conventional approaches that rely on complex auxiliary inputs such as body parsing and warped mask or require finely designed extract branches to process various input conditions, RefTon streamlines the process by directly generating try-on results from a source image and a target garment, without the need for structural guidance or auxiliary components to handle diverse inputs. Moreover, inspired by human clothing selection behavior, RefTon leverages additional reference images (the target garment worn on different individuals) to provide powerful guidance for refining texture alignment and maintaining the garment details. To enable this capability, we built a dataset containing unpaired reference images for training. Extensive experiments on public benchmarks demonstrate that RefTon achieves competitive or superior performance compared to state-of-the-art methods, while maintaining a simple and efficient person-to-person design.
title RefTon: Reference person shot assist virtual Try-on
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.00956