Published August 25, 2024 | Version v3
Dataset Open

ArtPlaces

  • 1. ROR icon Friedrich-Alexander-Universität Erlangen-Nürnberg
  • 2. University of Erlangen-Nuremberg

Description

Olfaction is often overlooked in cultural heritage studies, while examining historical depictions of olfactory scenes can offer valuable insights into the role of smells in history. The main challenge is the lack of published datasets with scene annotations for historical artworks, especially in artistic fragrant spaces.

We introduce a novel artistic scene-centric dataset, called ArtPlaces, consisting of 4541 artworks and categorized across 170 distinct physical scene categories. Additionally, it features two test sets aimed at the classification of fragrant places and artistic scenes. ArtPlaces is derived from three source datasets, RASD and WASD established by retrieving images from the Rijksmuseum collection[1] and Wikidata[2]. The respective query terms are used as weak (ie. semi-automatically generated) labels which serve as supervision signals during fine-tuning. The third source dataset is Fragrant Spaces, a manually labeled dataset of olfaction-related artworks. All the data are annotated with the Places365 categories[3]. 

We show that a transfer-learning approach using weakly labeled training data can remarkably improve the classification of fragrant spaces and, more generally, artistic scene depictions. This work lays a foundation for further exploration of olfactory spaces recognition and broadens the classification of physical scenes to the realm of fine art.

 

References

[1] Rijksmuseum. (2024). Object Metadata API. Retrieved from https://data.rijksmuseum.nl/object-metadata/

[2] Wikidata. (n.d.). Query Service. Retrieved from https://query.wikidata.org/

[3] CSAILVision. (n.d.). Places365. GitHub. Retrieved from https://github.com/CSAILVision/places365/tree/master?tab=readme-ov-file

Files

annotations_FragrantSpaces.csv

Files (1.9 GB)

Name Size Download all
md5:b8c61b0eabf7a65ee73df59d220b7143
6.3 kB Preview Download
md5:cdfd98f58e230cc841230b8d014a23dc
39.8 kB Preview Download
md5:cbe1ac16d51786310aeb4e5867f01172
151.8 kB Preview Download
md5:21f1da20bec0b612602352499c7fce80
33.7 kB Preview Download
md5:60da0d7da9fcab0dc81bb38882f59fd2
199.1 kB Preview Download
md5:06c963b85866bd0649f97cb43dd16673
6.8 kB Preview Download
md5:e3059e05fd7352fd5a49d5263fb1d62e
39.0 MB Preview Download
md5:d7b36848649561e01e2fc1c01e795ac3
9.3 kB Preview Download
md5:273de20a2e091086672920d146f8ed9d
1.7 GB Preview Download
md5:573efdbaa14634a9ec429f2c1effcd11
220.9 MB Preview Download

Additional details