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Main Authors: Li, Yanfeng, Chan, Kahou, Sun, Yue, Lam, Chantong, Tong, Tong, Yu, Zitong, Fu, Keren, Liu, Xiaohong, Tan, Tao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.10112
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author Li, Yanfeng
Chan, Kahou
Sun, Yue
Lam, Chantong
Tong, Tong
Yu, Zitong
Fu, Keren
Liu, Xiaohong
Tan, Tao
author_facet Li, Yanfeng
Chan, Kahou
Sun, Yue
Lam, Chantong
Tong, Tong
Yu, Zitong
Fu, Keren
Liu, Xiaohong
Tan, Tao
contents Multi-object images are prevalent in various real-world scenarios, including augmented reality, advertisement design, and medical imaging. Efficient and precise editing of these images is critical for these applications. With the advent of Stable Diffusion (SD), high-quality image generation and editing have entered a new era. However, existing methods often struggle to consider each object both individually and part of the whole image editing, both of which are crucial for ensuring consistent quantity perception, resulting in suboptimal perceptual performance. To address these challenges, we propose MoEdit, an auxiliary-free multi-object image editing framework. MoEdit facilitates high-quality multi-object image editing in terms of style transfer, object reinvention, and background regeneration, while ensuring consistent quantity perception between inputs and outputs, even with a large number of objects. To achieve this, we introduce the Feature Compensation (FeCom) module, which ensures the distinction and separability of each object attribute by minimizing the in-between interlacing. Additionally, we present the Quantity Attention (QTTN) module, which perceives and preserves quantity consistency by effective control in editing, without relying on auxiliary tools. By leveraging the SD model, MoEdit enables customized preservation and modification of specific concepts in inputs with high quality. Experimental results demonstrate that our MoEdit achieves State-Of-The-Art (SOTA) performance in multi-object image editing. Data and codes will be available at https://github.com/Tear-kitty/MoEdit.
format Preprint
id arxiv_https___arxiv_org_abs_2503_10112
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MoEdit: On Learning Quantity Perception for Multi-object Image Editing
Li, Yanfeng
Chan, Kahou
Sun, Yue
Lam, Chantong
Tong, Tong
Yu, Zitong
Fu, Keren
Liu, Xiaohong
Tan, Tao
Computer Vision and Pattern Recognition
Multi-object images are prevalent in various real-world scenarios, including augmented reality, advertisement design, and medical imaging. Efficient and precise editing of these images is critical for these applications. With the advent of Stable Diffusion (SD), high-quality image generation and editing have entered a new era. However, existing methods often struggle to consider each object both individually and part of the whole image editing, both of which are crucial for ensuring consistent quantity perception, resulting in suboptimal perceptual performance. To address these challenges, we propose MoEdit, an auxiliary-free multi-object image editing framework. MoEdit facilitates high-quality multi-object image editing in terms of style transfer, object reinvention, and background regeneration, while ensuring consistent quantity perception between inputs and outputs, even with a large number of objects. To achieve this, we introduce the Feature Compensation (FeCom) module, which ensures the distinction and separability of each object attribute by minimizing the in-between interlacing. Additionally, we present the Quantity Attention (QTTN) module, which perceives and preserves quantity consistency by effective control in editing, without relying on auxiliary tools. By leveraging the SD model, MoEdit enables customized preservation and modification of specific concepts in inputs with high quality. Experimental results demonstrate that our MoEdit achieves State-Of-The-Art (SOTA) performance in multi-object image editing. Data and codes will be available at https://github.com/Tear-kitty/MoEdit.
title MoEdit: On Learning Quantity Perception for Multi-object Image Editing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.10112