DAPlankton: Benchmark Dataset For Multi-Instrument Plankton Recognition Via Fine-Grained Domain Adaptation
Batrakhanov, Daniel; Eerola, Tuomas; Kraft, Kaisa; Haraguchi, Lumi; Lensu, Lasse; Suikkanen, Sanna; Camarena-Gómez, María Teresa; Seppälä, Jukka; Kälviäinen, Heikki (2024-09-27)
Huom!
Sisältö avataan julkiseksi: 28.09.2026
Sisältö avataan julkiseksi: 28.09.2026
Post-print / Final draft
Batrakhanov, Daniel
Eerola, Tuomas
Kraft, Kaisa
Haraguchi, Lumi
Lensu, Lasse
Suikkanen, Sanna
Camarena-Gómez, María Teresa
Seppälä, Jukka
Kälviäinen, Heikki
27.09.2024
158-164
IEEE
IEEE International Conference on Image Processing
School of Engineering Science
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© 2024 IEEE
© 2024 IEEE
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi-fe2024111391395
https://urn.fi/URN:NBN:fi-fe2024111391395
Tiivistelmä
Plankton recognition provides novel possibilities to study various environmental aspects and an interesting real-world context to develop domain adaptation (DA) methods. Different imaging instruments cause domain shift between datasets hampering the development of general plankton recognition methods. A promising remedy for this is DA allowing to adapt a model trained on one instrument to other instruments. In this paper, we present a new DA dataset called DAPlankton which consists of phytoplankton images obtained with different instruments. Phytoplankton provides a challenging DA problem due to the fine-grained nature of the task and high class imbalance in real-world datasets. DAPlankton consists of two subsets. DAPlanktonLAB contains images of cultured phytoplankton providing a balanced dataset with minimal label uncertainty. DAPlanktonSEA consists of images collected from the Baltic Sea providing challenging real-world data with large intra-class variance and class imbalance. We further present a benchmark comparison of three widely used DA methods.
Lähdeviite
Batrakhanov, D. et al. (2024). DAPlankton: Benchmark Dataset For Multi-Instrument Plankton Recognition Via Fine-Grained Domain Adaptation. In: 2024 IEEE International Conference on Image Processing (ICIP), Abu Dhabi, United Arab Emirates. pp. 158-164. DOI: 10.1109/ICIP51287.2024.10648228
Kokoelmat
- Tieteelliset julkaisut [1845]