English

HyperGLM: HyperGraph for Video Scene Graph Generation and Anticipation

Computer Vision and Pattern Recognition 2025-04-01 v2

Abstract

Multimodal LLMs have advanced vision-language tasks but still struggle with understanding video scenes. To bridge this gap, Video Scene Graph Generation (VidSGG) has emerged to capture multi-object relationships across video frames. However, prior methods rely on pairwise connections, limiting their ability to handle complex multi-object interactions and reasoning. To this end, we propose Multimodal LLMs on a Scene HyperGraph (HyperGLM), promoting reasoning about multi-way interactions and higher-order relationships. Our approach uniquely integrates entity scene graphs, which capture spatial relationships between objects, with a procedural graph that models their causal transitions, forming a unified HyperGraph. Significantly, HyperGLM enables reasoning by injecting this unified HyperGraph into LLMs. Additionally, we introduce a new Video Scene Graph Reasoning (VSGR) dataset featuring 1.9M frames from third-person, egocentric, and drone views and supports five tasks: Scene Graph Generation, Scene Graph Anticipation, Video Question Answering, Video Captioning, and Relation Reasoning. Empirically, HyperGLM consistently outperforms state-of-the-art methods across five tasks, effectively modeling and reasoning complex relationships in diverse video scenes.

Keywords

Cite

@article{arxiv.2411.18042,
  title  = {HyperGLM: HyperGraph for Video Scene Graph Generation and Anticipation},
  author = {Trong-Thuan Nguyen and Pha Nguyen and Jackson Cothren and Alper Yilmaz and Khoa Luu},
  journal= {arXiv preprint arXiv:2411.18042},
  year   = {2025}
}
R2 v1 2026-06-28T20:14:04.431Z