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Autori principali: Yan, Zexuan, Ma, Yue, Zou, Chang, Chen, Wenteng, Chen, Qifeng, Zhang, Linfeng
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2503.10270
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author Yan, Zexuan
Ma, Yue
Zou, Chang
Chen, Wenteng
Chen, Qifeng
Zhang, Linfeng
author_facet Yan, Zexuan
Ma, Yue
Zou, Chang
Chen, Wenteng
Chen, Qifeng
Zhang, Linfeng
contents Inversion-based image editing is rapidly gaining momentum while suffering from significant computation overhead, hindering its application in real-time interactive scenarios. In this paper, we rethink that the redundancy in inversion-based image editing exists in both the spatial and temporal dimensions, such as the unnecessary computation in unedited regions and the redundancy in the inversion progress. To tackle these challenges, we propose a practical framework, named EEdit, to achieve efficient image editing. Specifically, we introduce three techniques to solve them one by one. For spatial redundancy, spatial locality caching is introduced to compute the edited region and its neighboring regions while skipping the unedited regions, and token indexing preprocessing is designed to further accelerate the caching. For temporal redundancy, inversion step skipping is proposed to reuse the latent for efficient editing. Our experiments demonstrate an average of 2.46 $\times$ acceleration without performance drop in a wide range of editing tasks including prompt-guided image editing, dragging and image composition. Our codes are available at https://github.com/yuriYanZeXuan/EEdit
format Preprint
id arxiv_https___arxiv_org_abs_2503_10270
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle EEdit: Rethinking the Spatial and Temporal Redundancy for Efficient Image Editing
Yan, Zexuan
Ma, Yue
Zou, Chang
Chen, Wenteng
Chen, Qifeng
Zhang, Linfeng
Computer Vision and Pattern Recognition
Inversion-based image editing is rapidly gaining momentum while suffering from significant computation overhead, hindering its application in real-time interactive scenarios. In this paper, we rethink that the redundancy in inversion-based image editing exists in both the spatial and temporal dimensions, such as the unnecessary computation in unedited regions and the redundancy in the inversion progress. To tackle these challenges, we propose a practical framework, named EEdit, to achieve efficient image editing. Specifically, we introduce three techniques to solve them one by one. For spatial redundancy, spatial locality caching is introduced to compute the edited region and its neighboring regions while skipping the unedited regions, and token indexing preprocessing is designed to further accelerate the caching. For temporal redundancy, inversion step skipping is proposed to reuse the latent for efficient editing. Our experiments demonstrate an average of 2.46 $\times$ acceleration without performance drop in a wide range of editing tasks including prompt-guided image editing, dragging and image composition. Our codes are available at https://github.com/yuriYanZeXuan/EEdit
title EEdit: Rethinking the Spatial and Temporal Redundancy for Efficient Image Editing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.10270