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Autori principali: Wu, Yen-Siang, Luo, Rundong, Zhu, Jingsen, Tu, Tao, Farhadi, Ali, Wallingford, Matthew, Wang, Yu-Chiang Frank, Marschner, Steve, Ma, Wei-Chiu
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.21931
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author Wu, Yen-Siang
Luo, Rundong
Zhu, Jingsen
Tu, Tao
Farhadi, Ali
Wallingford, Matthew
Wang, Yu-Chiang Frank
Marschner, Steve
Ma, Wei-Chiu
author_facet Wu, Yen-Siang
Luo, Rundong
Zhu, Jingsen
Tu, Tao
Farhadi, Ali
Wallingford, Matthew
Wang, Yu-Chiang Frank
Marschner, Steve
Ma, Wei-Chiu
contents How can we tell whether a video has been sped up or slowed down? How can we generate videos at different speeds? Although videos have been central to modern computer vision research, little attention has been paid to perceiving and controlling the passage of time. In this paper, we study time as a learnable visual concept and develop models for reasoning about and manipulating the flow of time in videos. We first exploit the multimodal cues and temporal structure naturally present in videos to learn, in a self-supervised manner, to detect speed changes and estimate playback speed. We then show that these learned temporal reasoning models enable us to curate the largest slow-motion video dataset to date from noisy in-the-wild sources. Such slow-motion footage, typically filmed by high-speed cameras, contains substantially richer temporal detail than standard videos. Using this data, we further develop models capable of temporal control, including speed-conditioned video generation, which produces motion at specified playback speed, and temporal super-resolution, which tranforms low-FPS, blurry videos into high-FPS sequences with fine-grained temporal details. Our findings highlight time as a manipulable, perceptual dimension in video learning, opening doors to temporally controllable video generation, temporal forensics detection, and potentially richer world-models that understand how events unfold over time.
format Preprint
id arxiv_https___arxiv_org_abs_2604_21931
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Seeing Fast and Slow: Learning the Flow of Time in Videos
Wu, Yen-Siang
Luo, Rundong
Zhu, Jingsen
Tu, Tao
Farhadi, Ali
Wallingford, Matthew
Wang, Yu-Chiang Frank
Marschner, Steve
Ma, Wei-Chiu
Computer Vision and Pattern Recognition
Artificial Intelligence
Graphics
How can we tell whether a video has been sped up or slowed down? How can we generate videos at different speeds? Although videos have been central to modern computer vision research, little attention has been paid to perceiving and controlling the passage of time. In this paper, we study time as a learnable visual concept and develop models for reasoning about and manipulating the flow of time in videos. We first exploit the multimodal cues and temporal structure naturally present in videos to learn, in a self-supervised manner, to detect speed changes and estimate playback speed. We then show that these learned temporal reasoning models enable us to curate the largest slow-motion video dataset to date from noisy in-the-wild sources. Such slow-motion footage, typically filmed by high-speed cameras, contains substantially richer temporal detail than standard videos. Using this data, we further develop models capable of temporal control, including speed-conditioned video generation, which produces motion at specified playback speed, and temporal super-resolution, which tranforms low-FPS, blurry videos into high-FPS sequences with fine-grained temporal details. Our findings highlight time as a manipulable, perceptual dimension in video learning, opening doors to temporally controllable video generation, temporal forensics detection, and potentially richer world-models that understand how events unfold over time.
title Seeing Fast and Slow: Learning the Flow of Time in Videos
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Graphics
url https://arxiv.org/abs/2604.21931