TEMU-VTOFF
Text-Enhanced MUlti-category Virtual Try-Off

Inverse Virtual Try-On: Generating Multi-Category Product-Style Images from Clothed Individuals Davide Lobba1,2,*, Fulvio Sanguigni2,3,*, Bin Ren1,2, Marcella Cornia3, Rita Cucchiara3, Nicu Sebe1 1University of Trento, 2University of Pisa, 3University of Modena and Reggio Emilia * Equal contribution
π‘ Model Description
TEMU-VTOFF is a novel dual-DiT (Diffusion Transformer) architecture designed for the Virtual Try-Off task: generating in-shop images of garments worn by a person. By combining a pretrained feature extractor with a text-enhanced generation module, our method can handle occlusions, multiple garment categories, and ambiguous appearances. It further refines generation fidelity via a feature alignment module based on DINOv2.
This model is based on stabilityai/stable-diffusion-3-medium-diffusers
. The uploaded weights correspond to the finetuned feature extractor and the VTOFF DiT module.
β¨ Key Features
Our contribution can be summarized as follows:
- π― Multi-Category Try-Off. We present a unified framework capable of handling multiple garment types (upper-body, lower-body, and full-body clothes) without requiring category-specific pipelines.
- π Multimodal Hybrid Attention. We introduce a novel attention mechanism that integrates garment textual descriptions into the generative process by linking them with person-specific features. This helps the model synthesize occluded or ambiguous garment regions more accurately.
- β‘ Garment Aligner Module. We design a lightweight aligner that conditions generation on clean garment images, replacing conventional denoising objectives. This leads to better alignment consistency on the overall dataset and preserves more precise visual retention.
- π Extensive experiments. Experiments on the Dress Code and VITON-HD datasets demonstrate that TEMU-VTOFF outperforms prior methods in both the quality of generated images and alignment with the target garment, highlighting its strong generalization capabilities.
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