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Bibliographic Details
Main Authors: Chen, Mengting, Chen, Zhengrui, Du, Yongchao, Gao, Zuan, Hu, Taihang, Lan, Jinsong, Lin, Chao, Shen, Yefeng, Wang, Xingjian, Wang, Zhao, Wu, Zhengtao, Xu, Xiaoli, Xu, Zhengze, Yan, Hao, Zhang, Mingzhou, Zheng, Jun, Zhou, Qinye, Zhu, Xiaoyong, Zheng, Bo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.19748
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Table of Contents:
  • Recent advances in image generation and editing have opened new opportunities for virtual try-on. However, existing methods still struggle to meet complex real-world demands. We present Tstars-Tryon 1.0, a commercial-scale virtual try-on system that is robust, realistic, versatile, and highly efficient. First, our system maintains a high success rate across challenging cases like extreme poses, severe illumination variations, motion blur, and other in-the-wild conditions. Second, it delivers highly photorealistic results with fine-grained details, faithfully preserving garment texture, material properties, and structural characteristics, while largely avoiding common AI-generated artifacts. Third, beyond apparel try-on, our model supports flexible multi-image composition (up to 6 reference images) across 8 fashion categories, with coordinated control over person identity and background. Fourth, to overcome the latency bottlenecks of commercial deployment, our system is heavily optimized for inference speed, delivering near real-time generation for a seamless user experience. These capabilities are enabled by an integrated system design spanning end-to-end model architecture, a scalable data engine, robust infrastructure, and a multi-stage training paradigm. Extensive evaluation and large-scale product deployment demonstrate that Tstars-Tryon1.0 achieves leading overall performance. To support future research, we also release a comprehensive benchmark. The model has been deployed at an industrial scale on the Taobao App, serving millions of users with tens of millions of requests.