English

Answering Visual-Relational Queries in Web-Extracted Knowledge Graphs

Machine Learning 2019-05-06 v6 Artificial Intelligence

Abstract

A visual-relational knowledge graph (KG) is a multi-relational graph whose entities are associated with images. We explore novel machine learning approaches for answering visual-relational queries in web-extracted knowledge graphs. To this end, we have created ImageGraph, a KG with 1,330 relation types, 14,870 entities, and 829,931 images crawled from the web. With visual-relational KGs such as ImageGraph one can introduce novel probabilistic query types in which images are treated as first-class citizens. Both the prediction of relations between unseen images as well as multi-relational image retrieval can be expressed with specific families of visual-relational queries. We introduce novel combinations of convolutional networks and knowledge graph embedding methods to answer such queries. We also explore a zero-shot learning scenario where an image of an entirely new entity is linked with multiple relations to entities of an existing KG. The resulting multi-relational grounding of unseen entity images into a knowledge graph serves as a semantic entity representation. We conduct experiments to demonstrate that the proposed methods can answer these visual-relational queries efficiently and accurately.

Keywords

Cite

@article{arxiv.1709.02314,
  title  = {Answering Visual-Relational Queries in Web-Extracted Knowledge Graphs},
  author = {Daniel Oñoro-Rubio and Mathias Niepert and Alberto García-Durán and Roberto González and Roberto J. López-Sastre},
  journal= {arXiv preprint arXiv:1709.02314},
  year   = {2019}
}
R2 v1 2026-06-22T21:36:10.682Z