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InfinityStar: Unified Spacetime AutoRegressive Modeling for Visual Generation

About

We introduce InfinityStar, a unified spacetime autoregressive framework for high-resolution image and dynamic video synthesis. Building on the recent success of autoregressive modeling in both vision and language, our purely discrete approach jointly captures spatial and temporal dependencies within a single architecture. This unified design naturally supports a variety of generation tasks such as text-to-image, text-to-video, image-to-video, and long interactive video synthesis via straightforward temporal autoregression. Extensive experiments demonstrate that InfinityStar scores 83.74 on VBench, outperforming all autoregressive models by large margins, even surpassing some diffusion competitors like HunyuanVideo. Without extra optimizations, our model generates a 5s, 720p video approximately 10x faster than leading diffusion-based methods. To our knowledge, InfinityStar is the first discrete autoregressive video generator capable of producing industrial level 720p videos. We release all code and models to foster further research in efficient, high-quality video generation.

Jinlai Liu, Jian Han, Bin Yan, Hui Wu, Fengda Zhu, Xing Wang, Yi Jiang, Bingyue Peng, Zehuan Yuan• 2025

Related benchmarks

TaskDatasetResultRank
Text-to-Video GenerationVBench
Quality Score84.73
155
Video Generationshort videos 81-frames 240 prompts
Total Score5.3
38
Long Video Generation120, 240, 720 and 1440-frames long videos
Total Score2.63
20
Image-to-Video GenerationVBench 720p
V-I Subject Consistency97.54
5
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