ODOR: The ICPR2022 ODeuropa Challenge on Olfactory Object Recognition
- URL: http://arxiv.org/abs/2301.09878v1
- Date: Tue, 24 Jan 2023 09:35:43 GMT
- Title: ODOR: The ICPR2022 ODeuropa Challenge on Olfactory Object Recognition
- Authors: Mathias Zinnen, Prathmesh Madhu, Ronak Kosti, Peter Bell, Andreas
Maier, Vincent Christlein
- Abstract summary: The Odeuropa Challenge on Olfactory Object Recognition aims to foster the development of object detection in the visual arts.
We provide a dataset of 2647 artworks annotated with 20 120 tightly fit bounding boxes.
A test set containing 1140 artworks and 15 480 annotations is kept private for the challenge evaluation.
- Score: 20.33359041243155
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The Odeuropa Challenge on Olfactory Object Recognition aims to foster the
development of object detection in the visual arts and to promote an olfactory
perspective on digital heritage. Object detection in historical artworks is
particularly challenging due to varying styles and artistic periods. Moreover,
the task is complicated due to the particularity and historical variance of
predefined target objects, which exhibit a large intra-class variance, and the
long tail distribution of the dataset labels, with some objects having only
very few training examples. These challenges should encourage participants to
create innovative approaches using domain adaptation or few-shot learning. We
provide a dataset of 2647 artworks annotated with 20 120 tightly fit bounding
boxes that are split into a training and validation set (public). A test set
containing 1140 artworks and 15 480 annotations is kept private for the
challenge evaluation.
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