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Main Authors: Liang, Xiaoye, Qu, Zhiyuan, Zou, Mingye, Liu, Jiaxin, Jiang, Lai, Xu, Mai, Zhu, Yiheng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.11734
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author Liang, Xiaoye
Qu, Zhiyuan
Zou, Mingye
Liu, Jiaxin
Jiang, Lai
Xu, Mai
Zhu, Yiheng
author_facet Liang, Xiaoye
Qu, Zhiyuan
Zou, Mingye
Liu, Jiaxin
Jiang, Lai
Xu, Mai
Zhu, Yiheng
contents As virtual try-on (VTON) continues to advance, a growing number of real-world scenarios have emerged, pushing beyond the ability of the existing specialized VTON models. Meanwhile, universal multi-reference image editing models have progressed rapidly and exhibit strong generalization in visual editing, suggesting a promising route toward more flexible VTON systems. However, despite their strong capabilities, the strengths and limitations of universal editors for VTON remain insufficiently explored due to the lack of systematic evaluation benchmarks. To address this gap, we introduce VTEdit-Bench, a comprehensive benchmark designed to evaluate universal multi-reference image editing models across various realistic VTON scenarios. VTEdit-Bench contains 24,220 test image pairs spanning five representative VTON tasks with progressively increasing complexity, enabling systematic analysis of robustness and generalization. We further propose VTEdit-QA, a reference-aware VLM-based evaluator that assesses VTON performance from three key aspects: model consistency, cloth consistency, and overall image quality. Through this framework, we systematically evaluate eight universal editing models and compare them with seven specialized VTON models. Results show that top universal editors are competitive on conventional tasks and generalize more stably to harder scenarios, but remain challenged by complex reference configurations, particularly multi-cloth conditioning.
format Preprint
id arxiv_https___arxiv_org_abs_2603_11734
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle VTEdit-Bench: A Comprehensive Benchmark for Multi-Reference Image Editing Models in Virtual Try-On
Liang, Xiaoye
Qu, Zhiyuan
Zou, Mingye
Liu, Jiaxin
Jiang, Lai
Xu, Mai
Zhu, Yiheng
Computer Vision and Pattern Recognition
As virtual try-on (VTON) continues to advance, a growing number of real-world scenarios have emerged, pushing beyond the ability of the existing specialized VTON models. Meanwhile, universal multi-reference image editing models have progressed rapidly and exhibit strong generalization in visual editing, suggesting a promising route toward more flexible VTON systems. However, despite their strong capabilities, the strengths and limitations of universal editors for VTON remain insufficiently explored due to the lack of systematic evaluation benchmarks. To address this gap, we introduce VTEdit-Bench, a comprehensive benchmark designed to evaluate universal multi-reference image editing models across various realistic VTON scenarios. VTEdit-Bench contains 24,220 test image pairs spanning five representative VTON tasks with progressively increasing complexity, enabling systematic analysis of robustness and generalization. We further propose VTEdit-QA, a reference-aware VLM-based evaluator that assesses VTON performance from three key aspects: model consistency, cloth consistency, and overall image quality. Through this framework, we systematically evaluate eight universal editing models and compare them with seven specialized VTON models. Results show that top universal editors are competitive on conventional tasks and generalize more stably to harder scenarios, but remain challenged by complex reference configurations, particularly multi-cloth conditioning.
title VTEdit-Bench: A Comprehensive Benchmark for Multi-Reference Image Editing Models in Virtual Try-On
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.11734