Any2AnyTryon: Leveraging Adaptive Position Embeddings for Versatile Virtual Clothing Tasks
Hailong Guo, Bohan Zeng, Yiren Song, Wentao Zhang, Chuang Zhang,, Jiaming Liu

TL;DR
Any2AnyTryon introduces an adaptive position embedding approach and a large open-source dataset to improve the generalization, controllability, and quality of image-based virtual try-on systems without relying on masks or poses.
Contribution
The paper presents a novel adaptive position embedding method and the LAION-Garment dataset to enhance versatility and user control in virtual try-on tasks.
Findings
Outperforms existing methods in quality and flexibility
Enables mask-free and controllable try-on generation
Demonstrates strong generalization across categories
Abstract
Image-based virtual try-on (VTON) aims to generate a virtual try-on result by transferring an input garment onto a target person's image. However, the scarcity of paired garment-model data makes it challenging for existing methods to achieve high generalization and quality in VTON. Also, it limits the ability to generate mask-free try-ons. To tackle the data scarcity problem, approaches such as Stable Garment and MMTryon use a synthetic data strategy, effectively increasing the amount of paired data on the model side. However, existing methods are typically limited to performing specific try-on tasks and lack user-friendliness. To enhance the generalization and controllability of VTON generation, we propose Any2AnyTryon, which can generate try-on results based on different textual instructions and model garment images to meet various needs, eliminating the reliance on masks, poses, or…
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Taxonomy
TopicsHuman Motion and Animation · Face recognition and analysis · Human Pose and Action Recognition
