- Main
Machine learning techniques to characterize functional traits of plankton from image data
- Orenstein, Eric C;
- Ayata, Sakina‐Dorothée;
- Maps, Frédéric;
- Becker, Érica C;
- Benedetti, Fabio;
- Biard, Tristan;
- Garidel‐Thoron, Thibault;
- Ellen, Jeffrey S;
- Ferrario, Filippo;
- Giering, Sarah LC;
- Guy‐Haim, Tamar;
- Hoebeke, Laura;
- Iversen, Morten Hvitfeldt;
- Kiørboe, Thomas;
- Lalonde, Jean‐François;
- Lana, Arancha;
- Laviale, Martin;
- Lombard, Fabien;
- Lorimer, Tom;
- Martini, Séverine;
- Meyer, Albin;
- Möller, Klas Ove;
- Niehoff, Barbara;
- Ohman, Mark D;
- Pradalier, Cédric;
- Romagnan, Jean‐Baptiste;
- Schröder, Simon‐Martin;
- Sonnet, Virginie;
- Sosik, Heidi M;
- Stemmann, Lars S;
- Stock, Michiel;
- Terbiyik‐Kurt, Tuba;
- Valcárcel‐Pérez, Nerea;
- Vilgrain, Laure;
- Wacquet, Guillaume;
- Waite, Anya M;
- Irisson, Jean‐Olivier
- et al.
Abstract
Plankton imaging systems supported by automated classification and analysis have improved ecologists' ability to observe aquatic ecosystems. Today, we are on the cusp of reliably tracking plankton populations with a suite of lab-based and in situ tools, collecting imaging data at unprecedentedly fine spatial and temporal scales. But these data have potential well beyond examining the abundances of different taxa; the individual images themselves contain a wealth of information on functional traits. Here, we outline traits that could be measured from image data, suggest machine learning and computer vision approaches to extract functional trait information from the images, and discuss promising avenues for novel studies. The approaches we discuss are data agnostic and are broadly applicable to imagery of other aquatic or terrestrial organisms.
Many UC-authored scholarly publications are freely available on this site because of the UC's open access policies. Let us know how this access is important for you.
Main Content
Enter the password to open this PDF file:
-
-
-
-
-
-
-
-
-
-
-
-
-
-