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Goku: Flow Based Video Generative Foundation Models

Authors :
Chen, Shoufa
Ge, Chongjian
Zhang, Yuqi
Zhang, Yida
Zhu, Fengda
Yang, Hao
Hao, Hongxiang
Wu, Hui
Lai, Zhichao
Hu, Yifei
Lin, Ting-Che
Zhang, Shilong
Li, Fu
Li, Chuan
Wang, Xing
Peng, Yanghua
Sun, Peize
Luo, Ping
Jiang, Yi
Yuan, Zehuan
Peng, Bingyue
Liu, Xiaobing
Publication Year :
2025

Abstract

This paper introduces Goku, a state-of-the-art family of joint image-and-video generation models leveraging rectified flow Transformers to achieve industry-leading performance. We detail the foundational elements enabling high-quality visual generation, including the data curation pipeline, model architecture design, flow formulation, and advanced infrastructure for efficient and robust large-scale training. The Goku models demonstrate superior performance in both qualitative and quantitative evaluations, setting new benchmarks across major tasks. Specifically, Goku achieves 0.76 on GenEval and 83.65 on DPG-Bench for text-to-image generation, and 84.85 on VBench for text-to-video tasks. We believe that this work provides valuable insights and practical advancements for the research community in developing joint image-and-video generation models.<br />Comment: Demo: https://saiyan-world.github.io/goku/

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.04896
Document Type :
Working Paper