Result Details

Open-Set Plankton Recognition

KAREINEN, J.; SKYTTA, A.; EEROLA, T.; KRAFT, K.; LENSU, L.; SUIKKANEN, S.; LEHTINIEMI, M.; KÄLVIÄINEN, H. Open-Set Plankton Recognition. In Lecture Notes in Computer Science. Lecture Notes in Computer Science. CHAM: Springer Nature, 2025. p. 168-184. ISBN: 978-3-031-91671-7.
Type
conference paper
Language
English
Authors
Kareinen Joona
Skytta Annaliina
Eerola Tuomas
Kraft Kaisa
Lensu Lasse
Suikkanen Sanna
Lehtiniemi Maiju
Kälviäinen Heikki Antero, prof., Dr.
Abstract

This paper considers open-set recognition (OSR) of plankton images. Plankton include a diverse range of microscopic aquatic organisms that have an important role in marine ecosystems as primary producers and as a base of food webs. Given their sensitivity to environmental changes, fluctuations in plankton populations offer valuable information about oceans' health and climate change motivating their monitoring. Modern automatic plankton imaging devices enable the collection of large-scale plankton image datasets, facilitating species-level analysis. Plankton species recognition can be seen as an image classification task and is typically solved using deep learning-based image recognition models. However, data collection in real aquatic environments results in imaging devices capturing a variety of non-plankton particles and plankton species not present in the training set. This creates a challenging fine-grained OSR problem, characterized by subtle differences between taxonomically close plankton species. We address this challenge by conducting extensive experiments on three OSR approaches using both phyto- and zooplankton images analyzing also on the effect of the rejection thresholds for OSR. The results demonstrate that high OSR accuracy can be obtained promoting the use of these methods in operational plankton research. We have made the data publicly available to the research community.

Keywords

plankton recognition, open-set recognition, metric learning

Published
2025
Pages
168–184
Journal
Lecture Notes in Computer Science, vol. 15640, ISSN
Proceedings
Lecture Notes in Computer Science
Conference
European Conference on Computer Vision
ISBN
978-3-031-91671-7
Publisher
Springer Nature
Place
CHAM
DOI
UT WoS
001544992100011
EID Scopus
BibTeX
@inproceedings{BUT200639,
  author="{} and  {} and  {} and  {} and  {} and  {} and  {} and Heikki Antero {Kälviäinen}",
  title="Open-Set Plankton Recognition",
  booktitle="Lecture Notes in Computer Science",
  year="2025",
  journal="Lecture Notes in Computer Science",
  volume="15640",
  pages="168--184",
  publisher="Springer Nature",
  address="CHAM",
  doi="10.1007/978-3-031-91672-4\{_}11",
  isbn="978-3-031-91671-7"
}
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