Abstract
AbstractGraffiti is an urban phenomenon that is increasingly attracting the interest of the sciences. To the best of our knowledge, no suitable data corpora are available for systematic research until now. The Information System Graffiti in Germany project (Ingrid) closes this gap by dealing with graffiti image collections that have been made available to the project for public use. Within Ingrid, the graffiti images are collected, digitized and annotated. With this work, we aim to support the rapid access to a comprehensive data source on Ingrid targeted especially by researchers. In particular, we present IngridKG, an RDF knowledge graph of annotated graffiti, abides by the Linked Data and FAIR principles. We weekly update IngridKG by augmenting the new annotated graffiti to our knowledge graph. Our generation pipeline applies RDF data conversion, link discovery and data fusion approaches to the original data. The current version of IngridKG contains 460,640,154 triples and is linked to 3 other knowledge graphs by over 200,000 links. In our use case studies, we demonstrate the usefulness of our knowledge graph for different applications.
Funder
Deutsche Forschungsgemeinschaft
Publisher
Springer Science and Business Media LLC
Subject
Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability
Reference6 articles.
1. Ngomo, A.-C. N., Auer, S., Lehmann, J. & Zaveri, A. Introduction to linked data and its lifecycle on the web. In Reasoning Web International Summer School, 1–99 (Springer, 2014).
2. Wilkinson, M. D. et al. The fair guiding principles for scientific data management and stewardship. Scientific data 3 (2016).
3. Sherif, M. A., da Silva, A. A. M., Pestryakova, S., Ahmed, A. F. & Ngomo, A.-C. N. IngridKG: A FAIR Knowledge Graph of Graffiti. Zenodo https://doi.org/10.5281/zenodo.7759189 (2023).
4. Ngonga Ngomo, A.-C. et al. LIMES - A Framework for Link Discovery on the Semantic Web. KI - Künstliche Intelligenz, German Journal of Artificial Intelligence - Organ des Fachbereichs “Künstliche Intelligenz” der Gesellschaft für Informatik e.V. (2021).
5. Jain, T., Lennan, C., John, Z. & Tran, D. Imagededup. https://github.com/idealo/imagededup (2019).