Score: 2

Streaming Video Instruction Tuning

Published: December 24, 2025 | arXiv ID: 2512.21334v1

By: Jiaer Xia , Peixian Chen , Mengdan Zhang and more

Potential Business Impact:

Lets computers understand and talk about live videos.

Business Areas:
Video Streaming Content and Publishing, Media and Entertainment, Video

We present Streamo, a real-time streaming video LLM that serves as a general-purpose interactive assistant. Unlike existing online video models that focus narrowly on question answering or captioning, Streamo performs a broad spectrum of streaming video tasks, including real-time narration, action understanding, event captioning, temporal event grounding, and time-sensitive question answering. To develop such versatility, we construct Streamo-Instruct-465K, a large-scale instruction-following dataset tailored for streaming video understanding. The dataset covers diverse temporal contexts and multi-task supervision, enabling unified training across heterogeneous streaming tasks. After training end-to-end on the instruction-following dataset through a streamlined pipeline, Streamo exhibits strong temporal reasoning, responsive interaction, and broad generalization across a variety of streaming benchmarks. Extensive experiments show that Streamo bridges the gap between offline video perception models and real-time multimodal assistants, making a step toward unified, intelligent video understanding in continuous video streams.


Page Count
27 pages

Category
Computer Science:
CV and Pattern Recognition