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UniFit: Towards Universal Virtual Try-on with MLLM-Guided Semantic Alignment
📢 News
[2025-11-20] 🎉 UniFit has been accepted to AAAI 2026!
[2025-11-20] 🚀 The official repository is created. We will release the code and checkpoints soon.
📝 To-Do List
We are actively preparing the code for release. Please stay tuned!
Release Paper (arXiv)
Release Inference Code
Flux.1 Fill Backbone
SD 3.5 Medium Backbone
Release Pretrained Models (Checkpoints)
UniFit (SD 3.5 Medium Backbone)
UniFit (Flux.1 Fill Backbone)
Release Training Codes
Data processing scripts
Training scripts for Stage I & II
💡 Abstract
Image-based virtual try-on (VTON) aims to synthesize photorealistic images of a person wearing specified garments. Despite significant progress, building a universal VTON framework that can flexibly handle diverse and complex tasks remains a major challenge. Recent methods explore multi-task VTON frameworks guided by textual instructions, yet they still face two key limitations: (1) semantic gap between text instructions and reference images, and (2) data scarcity in complex scenarios. To address these challenges, we propose UniFit, a universal VTON framework driven by a Multimodal Large Language Model (MLLM). Specifically, we introduce an MLLM-Guided Semantic Alignment Module (MGSA), which integrates multimodal inputs using an MLLM and a set of learnable queries. By imposing a semantic alignment loss, MGSA captures cross-modal semantic relationships and provides coherent and explicit semantic guidance for the generative process, thereby reducing the semantic gap. Moreover, by devising a two-stage progressive training strategy with a self-synthesis pipeline, UniFit is able to learn complex tasks from limited data. Extensive experiments show that UniFit not only supports a wide range of VTON tasks, including multi-garment and model-to-model try-on, but also achieves state-of-the-art performance.
🔧 Installation
Coming soon. ...
⬇️ Model Zoo
Coming soon. We will provide weights for both SD3.5 and Flux.1 based models.