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Auteurs principaux: Fu, Zhoujie, Zeng, Xianfang, Lan, Jinghong, Liao, Xinyao, Chen, Cheng, Chen, Junyi, Wei, Jiacheng, Cheng, Wei, Liu, Shiyu, Chen, Yunuo, Yu, Gang, Lin, Guosheng
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2511.20635
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author Fu, Zhoujie
Zeng, Xianfang
Lan, Jinghong
Liao, Xinyao
Chen, Cheng
Chen, Junyi
Wei, Jiacheng
Cheng, Wei
Liu, Shiyu
Chen, Yunuo
Yu, Gang
Lin, Guosheng
author_facet Fu, Zhoujie
Zeng, Xianfang
Lan, Jinghong
Liao, Xinyao
Chen, Cheng
Chen, Junyi
Wei, Jiacheng
Cheng, Wei
Liu, Shiyu
Chen, Yunuo
Yu, Gang
Lin, Guosheng
contents Pre-trained video models learn powerful priors for generating high-quality, temporally coherent content. While these models excel at temporal coherence, their dynamics are often constrained by the continuous nature of their training data. We hypothesize that by injecting the rich and unconstrained content diversity from image data into this coherent temporal framework, we can generate image sets that feature both natural transitions and a far more expansive dynamic range. To this end, we introduce iMontage, a unified framework designed to repurpose a powerful video model into an all-in-one image generator. The framework consumes and produces variable-length image sets, unifying a wide array of image generation and editing tasks. To achieve this, we propose an elegant and minimally invasive adaptation strategy, complemented by a tailored data curation process and training paradigm. This approach allows the model to acquire broad image manipulation capabilities without corrupting its invaluable original motion priors. iMontage excels across several mainstream many-in-many-out tasks, not only maintaining strong cross-image contextual consistency but also generating scenes with extraordinary dynamics that surpass conventional scopes. Find our homepage at: https://kr1sjfu.github.io/iMontage-web/.
format Preprint
id arxiv_https___arxiv_org_abs_2511_20635
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle iMontage: Unified, Versatile, Highly Dynamic Many-to-many Image Generation
Fu, Zhoujie
Zeng, Xianfang
Lan, Jinghong
Liao, Xinyao
Chen, Cheng
Chen, Junyi
Wei, Jiacheng
Cheng, Wei
Liu, Shiyu
Chen, Yunuo
Yu, Gang
Lin, Guosheng
Computer Vision and Pattern Recognition
Pre-trained video models learn powerful priors for generating high-quality, temporally coherent content. While these models excel at temporal coherence, their dynamics are often constrained by the continuous nature of their training data. We hypothesize that by injecting the rich and unconstrained content diversity from image data into this coherent temporal framework, we can generate image sets that feature both natural transitions and a far more expansive dynamic range. To this end, we introduce iMontage, a unified framework designed to repurpose a powerful video model into an all-in-one image generator. The framework consumes and produces variable-length image sets, unifying a wide array of image generation and editing tasks. To achieve this, we propose an elegant and minimally invasive adaptation strategy, complemented by a tailored data curation process and training paradigm. This approach allows the model to acquire broad image manipulation capabilities without corrupting its invaluable original motion priors. iMontage excels across several mainstream many-in-many-out tasks, not only maintaining strong cross-image contextual consistency but also generating scenes with extraordinary dynamics that surpass conventional scopes. Find our homepage at: https://kr1sjfu.github.io/iMontage-web/.
title iMontage: Unified, Versatile, Highly Dynamic Many-to-many Image Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.20635