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Main Authors: Yang, Zhijing, Zhang, Weiwei, Yang, Mingliang, Peng, Siyuan, Shi, Yukai, Tan, Junpeng, Chen, Tianshui, Zhong, Liruo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.22838
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author Yang, Zhijing
Zhang, Weiwei
Yang, Mingliang
Peng, Siyuan
Shi, Yukai
Tan, Junpeng
Chen, Tianshui
Zhong, Liruo
author_facet Yang, Zhijing
Zhang, Weiwei
Yang, Mingliang
Peng, Siyuan
Shi, Yukai
Tan, Junpeng
Chen, Tianshui
Zhong, Liruo
contents This work aims to address a novel Customized Virtual Try-ON (Cu-VTON) task, enabling the superimposition of a specified garment onto a model that can be customized in terms of appearance, posture, and additional attributes. Compared with traditional VTON task, it enables users to tailor digital avatars to their individual preferences, thereby enhancing the virtual fitting experience with greater flexibility and engagement. To address this task, we introduce a Neural Clothing Tryer (NCT) framework, which exploits the advanced diffusion models equipped with semantic enhancement and controlling modules to better preserve semantic characterization and textural details of the garment and meanwhile facilitating the flexible editing of the model's postures and appearances. Specifically, NCT introduces a semantic-enhanced module to take semantic descriptions of garments and utilizes a visual-language encoder to learn aligned features across modalities. The aligned features are served as condition input to the diffusion model to enhance the preservation of the garment's semantics. Then, a semantic controlling module is designed to take the garment image, tailored posture image, and semantic description as input to maintain garment details while simultaneously editing model postures, expressions, and various attributes. Extensive experiments on the open available benchmark demonstrate the superior performance of the proposed NCT framework.
format Preprint
id arxiv_https___arxiv_org_abs_2601_22838
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Neural Clothing Tryer: Customized Virtual Try-On via Semantic Enhancement and Controlling Diffusion Model
Yang, Zhijing
Zhang, Weiwei
Yang, Mingliang
Peng, Siyuan
Shi, Yukai
Tan, Junpeng
Chen, Tianshui
Zhong, Liruo
Computer Vision and Pattern Recognition
This work aims to address a novel Customized Virtual Try-ON (Cu-VTON) task, enabling the superimposition of a specified garment onto a model that can be customized in terms of appearance, posture, and additional attributes. Compared with traditional VTON task, it enables users to tailor digital avatars to their individual preferences, thereby enhancing the virtual fitting experience with greater flexibility and engagement. To address this task, we introduce a Neural Clothing Tryer (NCT) framework, which exploits the advanced diffusion models equipped with semantic enhancement and controlling modules to better preserve semantic characterization and textural details of the garment and meanwhile facilitating the flexible editing of the model's postures and appearances. Specifically, NCT introduces a semantic-enhanced module to take semantic descriptions of garments and utilizes a visual-language encoder to learn aligned features across modalities. The aligned features are served as condition input to the diffusion model to enhance the preservation of the garment's semantics. Then, a semantic controlling module is designed to take the garment image, tailored posture image, and semantic description as input to maintain garment details while simultaneously editing model postures, expressions, and various attributes. Extensive experiments on the open available benchmark demonstrate the superior performance of the proposed NCT framework.
title Neural Clothing Tryer: Customized Virtual Try-On via Semantic Enhancement and Controlling Diffusion Model
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.22838