CVAug 11, 2025

Undress to Redress: A Training-Free Framework for Virtual Try-On

arXiv:2508.07680v1h-index: 4
Originality Incremental advance
AI Analysis

This addresses a common practical scenario in online shopping for users, though it is incremental as it builds on existing VTON methods.

The paper tackles the problem of unrealistic outputs in virtual try-on for long-sleeve-to-short-sleeve conversions by proposing UR-VTON, a training-free framework that decomposes the process into undressing and redressing steps, resulting in improved detail preservation and image quality over state-of-the-art methods.

Virtual try-on (VTON) is a crucial task for enhancing user experience in online shopping by generating realistic garment previews on personal photos. Although existing methods have achieved impressive results, they struggle with long-sleeve-to-short-sleeve conversions-a common and practical scenario-often producing unrealistic outputs when exposed skin is underrepresented in the original image. We argue that this challenge arises from the ''majority'' completion rule in current VTON models, which leads to inaccurate skin restoration in such cases. To address this, we propose UR-VTON (Undress-Redress Virtual Try-ON), a novel, training-free framework that can be seamlessly integrated with any existing VTON method. UR-VTON introduces an ''undress-to-redress'' mechanism: it first reveals the user's torso by virtually ''undressing,'' then applies the target short-sleeve garment, effectively decomposing the conversion into two more manageable steps. Additionally, we incorporate Dynamic Classifier-Free Guidance scheduling to balance diversity and image quality during DDPM sampling, and employ Structural Refiner to enhance detail fidelity using high-frequency cues. Finally, we present LS-TON, a new benchmark for long-sleeve-to-short-sleeve try-on. Extensive experiments demonstrate that UR-VTON outperforms state-of-the-art methods in both detail preservation and image quality. Code will be released upon acceptance.

Foundations

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