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Autori principali: Girish, Sharath, Ivanov, Viacheslav, Chen, Tsai-Shien, Chen, Hao, Siarohin, Aliaksandr, Tulyakov, Sergey
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.10943
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author Girish, Sharath
Ivanov, Viacheslav
Chen, Tsai-Shien
Chen, Hao
Siarohin, Aliaksandr
Tulyakov, Sergey
author_facet Girish, Sharath
Ivanov, Viacheslav
Chen, Tsai-Shien
Chen, Hao
Siarohin, Aliaksandr
Tulyakov, Sergey
contents Recent advances in subject-driven video generation with large diffusion models have enabled personalized content synthesis conditioned on user-provided subjects. However, existing methods lack fine-grained temporal control over subject appearance and disappearance, which are essential for applications such as compositional video synthesis, storyboarding, and controllable animation. We propose AlcheMinT, a unified framework that introduces explicit timestamps conditioning for subject-driven video generation. Our approach introduces a novel positional encoding mechanism that unlocks the encoding of temporal intervals, associated in our case with subject identities, while seamlessly integrating with the pretrained video generation model positional embeddings. Additionally, we incorporate subject-descriptive text tokens to strengthen binding between visual identity and video captions, mitigating ambiguity during generation. Through token-wise concatenation, AlcheMinT avoids any additional cross-attention modules and incurs negligible parameter overhead. We establish a benchmark evaluating multiple subject identity preservation, video fidelity, and temporal adherence. Experimental results demonstrate that AlcheMinT achieves visual quality matching state-of-the-art video personalization methods, while, for the first time, enabling precise temporal control over multi-subject generation within videos. Project page is at https://snap-research.github.io/Video-AlcheMinT
format Preprint
id arxiv_https___arxiv_org_abs_2512_10943
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AlcheMinT: Fine-grained Temporal Control for Multi-Reference Consistent Video Generation
Girish, Sharath
Ivanov, Viacheslav
Chen, Tsai-Shien
Chen, Hao
Siarohin, Aliaksandr
Tulyakov, Sergey
Computer Vision and Pattern Recognition
Artificial Intelligence
Recent advances in subject-driven video generation with large diffusion models have enabled personalized content synthesis conditioned on user-provided subjects. However, existing methods lack fine-grained temporal control over subject appearance and disappearance, which are essential for applications such as compositional video synthesis, storyboarding, and controllable animation. We propose AlcheMinT, a unified framework that introduces explicit timestamps conditioning for subject-driven video generation. Our approach introduces a novel positional encoding mechanism that unlocks the encoding of temporal intervals, associated in our case with subject identities, while seamlessly integrating with the pretrained video generation model positional embeddings. Additionally, we incorporate subject-descriptive text tokens to strengthen binding between visual identity and video captions, mitigating ambiguity during generation. Through token-wise concatenation, AlcheMinT avoids any additional cross-attention modules and incurs negligible parameter overhead. We establish a benchmark evaluating multiple subject identity preservation, video fidelity, and temporal adherence. Experimental results demonstrate that AlcheMinT achieves visual quality matching state-of-the-art video personalization methods, while, for the first time, enabling precise temporal control over multi-subject generation within videos. Project page is at https://snap-research.github.io/Video-AlcheMinT
title AlcheMinT: Fine-grained Temporal Control for Multi-Reference Consistent Video Generation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.10943