Example of WikiArtVectors retrieving similar art works to Picasso's 'The old blind guitarist.' Left: similar artworks by style. Right: similar artworks by color. Credit: Desikan, Shimao, and Miton, 2022

We've all seen art made from data, but what about data from art?

In a feature paper in Entropy, Bhargav Srinivasa Desikan (École Polytechnique Fédérale de Lausanne), Hajime Shimao (McGill University, former SFI Postdoctoral Fellow), and SFI Complexity Postdoctoral Fellow Helena Miton released a novel dataset for indexing, searching, retrieving, organizing, and analyzing 68,094 works of art by more than 1,600 historically significant artists.

Using state-of-the-art machine learning, the authors were able to extract both style representations and color distributions, which can be used to query stylistic periods for an or a movement (e.g., Picasso's "blue" phase).

Their , WikiArtVectors, aims to make computational data approaches available to art historians and cultural analysts, to help discover and understand patterns of cultural evolution.

More information: Bhargav Srinivasa Desikan et al, WikiArtVectors: Style and Color Representations of Artworks for Cultural Analysis via Information Theoretic Measures, Entropy (2022). DOI: 10.3390/e24091175

Provided by Santa Fe Institute