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Main Authors: Xiong, Peilin, Chen, Junwen, Yuan, Honghui, Yanai, Keiji
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.17302
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author Xiong, Peilin
Chen, Junwen
Yuan, Honghui
Yanai, Keiji
author_facet Xiong, Peilin
Chen, Junwen
Yuan, Honghui
Yanai, Keiji
contents Localized subject-driven image editing aims to seamlessly integrate user-specified objects into target scenes. As generative models continue to scale, training becomes increasingly costly in terms of memory and computation, highlighting the need for training-free and scalable editing frameworks.To this end, we propose PosBridge an efficient and flexible framework for inserting custom objects. A key component of our method is positional embedding transplant, which guides the diffusion model to faithfully replicate the structural characteristics of reference objects.Meanwhile, we introduce the Corner Centered Layout, which concatenates reference images and the background image as input to the FLUX.1-Fill model. During progressive denoising, positional embedding transplant is applied to guide the noise distribution in the target region toward that of the reference object. In this way, Corner Centered Layout effectively directs the FLUX.1-Fill model to synthesize identity-consistent content at the desired location. Extensive experiments demonstrate that PosBridge outperforms mainstream baselines in structural consistency, appearance fidelity, and computational efficiency, showcasing its practical value and potential for broad adoption.
format Preprint
id arxiv_https___arxiv_org_abs_2508_17302
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PosBridge: Multi-View Positional Embedding Transplant for Identity-Aware Image Editing
Xiong, Peilin
Chen, Junwen
Yuan, Honghui
Yanai, Keiji
Computer Vision and Pattern Recognition
Localized subject-driven image editing aims to seamlessly integrate user-specified objects into target scenes. As generative models continue to scale, training becomes increasingly costly in terms of memory and computation, highlighting the need for training-free and scalable editing frameworks.To this end, we propose PosBridge an efficient and flexible framework for inserting custom objects. A key component of our method is positional embedding transplant, which guides the diffusion model to faithfully replicate the structural characteristics of reference objects.Meanwhile, we introduce the Corner Centered Layout, which concatenates reference images and the background image as input to the FLUX.1-Fill model. During progressive denoising, positional embedding transplant is applied to guide the noise distribution in the target region toward that of the reference object. In this way, Corner Centered Layout effectively directs the FLUX.1-Fill model to synthesize identity-consistent content at the desired location. Extensive experiments demonstrate that PosBridge outperforms mainstream baselines in structural consistency, appearance fidelity, and computational efficiency, showcasing its practical value and potential for broad adoption.
title PosBridge: Multi-View Positional Embedding Transplant for Identity-Aware Image Editing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.17302