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Autori principali: Zhang, Zewei, Xian, Jia Jun Cheng, Liu, Kaiwen, Liang, Ming, Chu, Hang, Chen, Jun, Liao, Renjie
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.22606
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author Zhang, Zewei
Xian, Jia Jun Cheng
Liu, Kaiwen
Liang, Ming
Chu, Hang
Chen, Jun
Liao, Renjie
author_facet Zhang, Zewei
Xian, Jia Jun Cheng
Liu, Kaiwen
Liang, Ming
Chu, Hang
Chen, Jun
Liao, Renjie
contents Predicting future motion is crucial in video understanding and controllable video generation. Dense point trajectories are a compact, expressive motion representation, but modeling their future evolution from observed video remains challenging. We propose a framework that predicts future trajectories and visibility from past trajectories and video context. Our method has three components: (1) Grid-Anchor Offset Encoding, which reduces location-dependent bias by representing each point as an offset from its pixel-center anchor; (2) TrajLoom-VAE, which learns a compact spatiotemporal latent space for dense trajectories with masked reconstruction and a spatiotemporal consistency regularizer; and (3) TrajLoom-Flow, which generates future trajectories in latent space via flow matching, with boundary cues and on-policy K-step fine-tuning for stable sampling. We also introduce TrajLoomBench, a unified benchmark spanning real and synthetic videos with a standardized setup aligned with video-generation benchmarks. Compared with state-of-the-art methods, our approach extends the prediction horizon from 24 to 81 frames while improving motion realism and stability across datasets. The predicted trajectories directly support downstream video generation and editing. Code, model checkpoints, and datasets are available at https://trajloom.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2603_22606
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TrajLoom: Dense Future Trajectory Generation from Video
Zhang, Zewei
Xian, Jia Jun Cheng
Liu, Kaiwen
Liang, Ming
Chu, Hang
Chen, Jun
Liao, Renjie
Computer Vision and Pattern Recognition
Predicting future motion is crucial in video understanding and controllable video generation. Dense point trajectories are a compact, expressive motion representation, but modeling their future evolution from observed video remains challenging. We propose a framework that predicts future trajectories and visibility from past trajectories and video context. Our method has three components: (1) Grid-Anchor Offset Encoding, which reduces location-dependent bias by representing each point as an offset from its pixel-center anchor; (2) TrajLoom-VAE, which learns a compact spatiotemporal latent space for dense trajectories with masked reconstruction and a spatiotemporal consistency regularizer; and (3) TrajLoom-Flow, which generates future trajectories in latent space via flow matching, with boundary cues and on-policy K-step fine-tuning for stable sampling. We also introduce TrajLoomBench, a unified benchmark spanning real and synthetic videos with a standardized setup aligned with video-generation benchmarks. Compared with state-of-the-art methods, our approach extends the prediction horizon from 24 to 81 frames while improving motion realism and stability across datasets. The predicted trajectories directly support downstream video generation and editing. Code, model checkpoints, and datasets are available at https://trajloom.github.io/.
title TrajLoom: Dense Future Trajectory Generation from Video
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.22606