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Autori principali: Naaman, Avihai, Weber, Ron Shapira, Freifeld, Oren
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.14051
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author Naaman, Avihai
Weber, Ron Shapira
Freifeld, Oren
author_facet Naaman, Avihai
Weber, Ron Shapira
Freifeld, Oren
contents Synchronizing videos captured simultaneously from multiple cameras in the same scene is often easy and typically requires only simple time shifts. However, synchronizing videos from different scenes or, more recently, generative AI videos, poses a far more complex challenge due to diverse subjects, backgrounds, and nonlinear temporal misalignment. We propose Temporal Prototype Learning (TPL), a prototype-based framework that constructs a shared, compact 1D representation from high-dimensional embeddings extracted by any of various pretrained models. TPL robustly aligns videos by learning a unified prototype sequence that anchors key action phases, thereby avoiding exhaustive pairwise matching. Our experiments show that TPL improves synchronization accuracy, efficiency, and robustness across diverse datasets, including fine-grained frame retrieval and phase classification tasks. Importantly, TPL is the first approach to mitigate synchronization issues in multiple generative AI videos depicting the same action. Our code and a new multiple video synchronization dataset are available at https://bgu-cs-vil.github.io/TPL/
format Preprint
id arxiv_https___arxiv_org_abs_2510_14051
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synchronization of Multiple Videos
Naaman, Avihai
Weber, Ron Shapira
Freifeld, Oren
Computer Vision and Pattern Recognition
Synchronizing videos captured simultaneously from multiple cameras in the same scene is often easy and typically requires only simple time shifts. However, synchronizing videos from different scenes or, more recently, generative AI videos, poses a far more complex challenge due to diverse subjects, backgrounds, and nonlinear temporal misalignment. We propose Temporal Prototype Learning (TPL), a prototype-based framework that constructs a shared, compact 1D representation from high-dimensional embeddings extracted by any of various pretrained models. TPL robustly aligns videos by learning a unified prototype sequence that anchors key action phases, thereby avoiding exhaustive pairwise matching. Our experiments show that TPL improves synchronization accuracy, efficiency, and robustness across diverse datasets, including fine-grained frame retrieval and phase classification tasks. Importantly, TPL is the first approach to mitigate synchronization issues in multiple generative AI videos depicting the same action. Our code and a new multiple video synchronization dataset are available at https://bgu-cs-vil.github.io/TPL/
title Synchronization of Multiple Videos
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.14051