English

Hyper-relationship Learning Network for Scene Graph Generation

Computer Vision and Pattern Recognition 2022-03-08 v2

Abstract

Generating informative scene graphs from images requires integrating and reasoning from various graph components, i.e., objects and relationships. However, current scene graph generation (SGG) methods, including the unbiased SGG methods, still struggle to predict informative relationships due to the lack of 1) high-level inference such as transitive inference between relationships and 2) efficient mechanisms that can incorporate all interactions of graph components. To address the issues mentioned above, we devise a hyper-relationship learning network, termed HLN, for SGG. Specifically, the proposed HLN stems from hypergraphs and two graph attention networks (GATs) are designed to infer relationships: 1) the object-relationship GAT or OR-GAT to explore interactions between objects and relationships, and 2) the hyper-relationship GAT or HR-GAT to integrate transitive inference of hyper-relationships, i.e., the sequential relationships between three objects for transitive reasoning. As a result, HLN significantly improves the performance of scene graph generation by integrating and reasoning from object interactions, relationship interactions, and transitive inference of hyper-relationships. We evaluate HLN on the most popular SGG dataset, i.e., the Visual Genome dataset, and the experimental results demonstrate its great superiority over recent state-of-the-art methods. For example, the proposed HLN improves the recall per relationship from 11.3\% to 13.1\%, and maintains the recall per image from 19.8\% to 34.9\%. We will release the source code and pretrained models on GitHub.

Keywords

Cite

@article{arxiv.2202.07271,
  title  = {Hyper-relationship Learning Network for Scene Graph Generation},
  author = {Yibing Zhan and Zhi Chen and Jun Yu and BaoSheng Yu and Dacheng Tao and Yong Luo},
  journal= {arXiv preprint arXiv:2202.07271},
  year   = {2022}
}
R2 v1 2026-06-24T09:37:26.642Z