A new integrated search interface will become available in the next phase of marineinfo.org.
For the time being, please use IMIS to search available data
IFCB Uto 2021 JERICO-RI Gulf of Finland Pilot Supersite [IFCB Utö 2021 JERICO-RI Gulf of Finland Pilot Supersite] Citation Kraft, K., Haraguchi, L., Velhonoja, O., Seppälä, J. (2022). SYKE-plankton_IFCB_Utö_2021. https://doi.org/10.23728/B2SHARE.7C273B6F409C47E98A868D6517BE3AE3. https://marineinfo.org/id/dataset/8218 Contact:
Finnish Environment Institute (FEI/SYKE), more ; Availability: This dataset is licensed under a Creative Commons Attribution 4.0 International License. Description
The data was used for validating CNN model performance for natural samples. The sample selection targeted on one sample per week from continuous operation between January to December 2021. Due to scarcity of some classes additional samples were selected from expected seasons. The selected samples were manually inspected: all classifications were assessed (confirmed or corrected) and all identifiable images that were left under the thresholds were labeled. The unidentifiable images that were left without an assigned class were considered as unclassified. More detailed explanation and example images can be found from the publication Kraft et al. 2022. Scope Themes: Biology > Plankton > Phytoplankton Keywords: Marine/Coastal, Baltic Sea, EurOBIS calculated BBOX, Chlorophyta, Chrysophyceae, Cryptophyceae, Cyanophyceae, , Dinophyceae, Euglenophyceae Geographical coverage Baltic Sea [Marine Regions] EurOBIS calculated BBOX Stations Bounding Box Coordinates: MinLong: 21,37; MinLat: 59,78 - MaxLong: 21,37; MaxLat: 59,78 [WGS84] Taxonomic coverage Parameters Contributors Finnish Environment Institute (FEI/SYKE), more, data creator Related datasets Published in: EurOBIS: European Ocean Biodiversity Information System, more Publication Describing this dataset Kraft, K. et al. (2022). Towards operational phytoplankton recognition with automated high-throughput imaging, near-real-time data processing, and convolutional neural networks. Front. Mar. Sci. 9: 867695. https://dx.doi.org/10.3389/fmars.2022.867695, more URLs Dataset information: Other: Data type: Data Data origin: Research: field survey Metadatarecord created: 2023-03-08 Information last updated: 2023-04-07 |