/OpenRichpedia

东南大学多模态知识图谱-OpenRichpedia

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Richpedia: A Comprehensive Multi-Modal Knowledge Graph

Introduction

With the rapid development of Semantic Web technologies, various knowledge graphs are published on the Web using Resource Description Framework (RDF), such as Wikidata and DBpedia. Knowledge graphs provide for setting RDF links among different entities, thereby forming a large heterogeneous graph, supporting semantic search, question answering and other intelligent services. Meanwhile, public availability of visual resource collections has attracted much attention for different Computer Vision (CV) research purposes, including visual question answering, image classification, object and relationship detection, etc. And we have witnessed promising results by encoding entity and relation information of textual knowledge graphs for CV tasks. Whereas most knowledge graph construction work in the Semantic Web and Natural Language Processing (NLP) communities still focus on organizing and discovering only textual knowledge in a structured representation. There is a relatively small amount of attention in utilizing visual resources for KG research. A visual database is normally a rich source of image or video data and provides sufficient visual information about entities in KGs. Obviously, making link prediction and entity alignment in wider scope can empower models to make better performance when considering textual and visual features together.

As mentioned above, general knowledge graphs focus on the textual facts. There is still no comprehensive multi-modal knowledge graph dataset prohibiting further exploring textual and visual facts on either side. To fill this gap, we provide a comprehensive multi-modal dataset (called Richpedia) in this paper, as shown in figure below.

In summary, our Richpedia data resource mainly makes the following contributions:

  • To our best knowledge, we are the first to provide comprehensive visualrelational resources to general knowledge graphs. The result is a big and high-quality multi-modal knowledge graph dataset, which provides a wider data scope to the researchers from The Semantic Web and Computer Vision.
  • We propose a novel framework to construct the multi-modal knowledge graph. The process starts by collecting entities and images from Wikidata, Wikipedia, and Search Engine respectively. Images are then filtered by a diversity retrieval model. Finally, RDF links are set between image entities based on the hyperlinks and descriptions in Wikipedia.
  • We publish the Richpedia as an open resource, and provide a faceted query endpoint using Apache Jena Fuseki1. Researchers can retrieve and leverage data distributed over general KGs and image resources to answering more richer visual queries and make multi-relational link predictions.

Download

You can download images and triples of relationship from here through BaiduYun Drive. Because the image entity folder is relatively large, we split it into two parts(City&Sight, People) for download.

Image

NT Files

Friendly Link

Our data uses other resources, so we make a statement here.

  • Wikidata is becoming an increasingly important knowledge graph in the research community. We collect the KG entities from Wikidata as EKG in Richpedia.
  • Wikipedia contains images for KG entities in Wikidata and a number of related hyperlinks among these entities. We will collect part of the image entities from Wikipedia and relations between collected KG entities and image entities. We will also discover relations between image entities based on the hyperlinks and related descriptions in Wikipedia.
  • Google, Yahoo, Bing image sources: To obtain sufficient image entities related to each KG entity, we implemented a web crawler taking input as KG entities to image search engines Google Images, Bing Images, and Yahoo Image Search, and parse query results.

License

This work is licensed under a Creative Commons Attribution 4.0 International License

Contact

  • Qiushuo Zheng qs_zheng@seu.edu.cn
  • Jianxiong Zheng zjx@seu.edu.cn
  • Guilin Qi gqi@seu.edu.cn
  • Meng Wang meng.wang@seu.edu.cn
  • Update

    • V2.0

      Add images and triples of relationship.

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