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Flowception: Temporally Expansive Flow Matching for Video Generation

12 December 2025
Tariq Berrada Ifriqi
John Nguyen
Karteek Alahari
Jakob Verbeek
Ricky T. Q. Chen
    VGen
ArXiv (abs)PDFHTML
Main:9 Pages
13 Figures
Bibliography:4 Pages
1 Tables
Appendix:10 Pages
Abstract

We present Flowception, a novel non-autoregressive and variable-length video generation framework. Flowception learns a probability path that interleaves discrete frame insertions with continuous frame denoising. Compared to autoregressive methods, Flowception alleviates error accumulation/drift as the frame insertion mechanism during sampling serves as an efficient compression mechanism to handle long-term context. Compared to full-sequence flows, our method reduces FLOPs for training three-fold, while also being more amenable to local attention variants, and allowing to learn the length of videos jointly with their content. Quantitative experimental results show improved FVD and VBench metrics over autoregressive and full-sequence baselines, which is further validated with qualitative results. Finally, by learning to insert and denoise frames in a sequence, Flowception seamlessly integrates different tasks such as image-to-video generation and video interpolation.

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