ArtGraph: Towards an Artistic Knowledge Graph
- URL: http://arxiv.org/abs/2105.15028v1
- Date: Mon, 31 May 2021 15:09:05 GMT
- Title: ArtGraph: Towards an Artistic Knowledge Graph
- Authors: Giovanna Castellano, Giovanni Sansaro, Gennaro Vessio
- Abstract summary: This paper presents our ongoing work towards ArtGraph: an artistic knowledge graph based on WikiArt and DBpedia.
A knowledge graph that integrates a rich body of information about artworks, artists, painting schools, etc., in a unified structured framework can provide a valuable resource for more powerful information retrieval and knowledge discovery tools in the artistic domain.
- Score: 6.233095477694583
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents our ongoing work towards ArtGraph: an artistic knowledge
graph based on WikiArt and DBpedia. Automatic art analysis has seen an
ever-increasing interest from the pattern recognition and computer vision
community. However, most of the current work is mainly based solely on
digitized artwork images, sometimes supplemented with some metadata and textual
comments. A knowledge graph that integrates a rich body of information about
artworks, artists, painting schools, etc., in a unified structured framework
can provide a valuable resource for more powerful information retrieval and
knowledge discovery tools in the artistic domain.
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