
Proceedings Paper
Phytoplankton global mapping from space with a support vector machine algorithmFormat | Member Price | Non-Member Price |
---|---|---|
$17.00 | $21.00 |
Paper Abstract
In recent years great progress has been made in global mapping of phytoplankton from space. Two main trends have
emerged, the recognition of phytoplankton functional types (PFT) based on reflectance normalized to chlorophyll-a
concentration, and the recognition of phytoplankton size class (PSC) based on the relationship between cell size and
chlorophyll-a concentration. However, PFTs and PSCs are not decorrelated, and one approach can complement the other
in a recognition task. In this paper, we explore the recognition of several dominant PFTs by combining reflectance
anomalies, chlorophyll-a concentration and other environmental parameters, such as sea surface temperature and wind
speed. Remote sensing pixels are labeled thanks to coincident in-situ pigment data from GeP&CO, NOMAD and
MAREDAT datasets, covering various oceanographic environments. The recognition is made with a supervised Support
Vector Machine classifier trained on the labeled pixels. This algorithm enables a non-linear separation of the classes in the
input space and is especially adapted for small training datasets as available here. Moreover, it provides a class probability
estimate, allowing one to enhance the robustness of the classification results through the choice of a minimum probability
threshold. A greedy feature selection associated to a 10-fold cross-validation procedure is applied to select the most
discriminative input features and evaluate the classification performance. The best classifiers are finally applied on daily
remote sensing datasets (SeaWIFS, MODISA) and the resulting dominant PFT maps are compared with other studies.
Several conclusions are drawn: (1) the feature selection highlights the weight of temperature, chlorophyll-a and wind speed
variables in phytoplankton recognition; (2) the classifiers show good results and dominant PFT maps in agreement with
phytoplankton distribution knowledge; (3) classification on MODISA data seems to perform better than on SeaWIFS data,
(4) the probability threshold screens correctly the areas of smallest confidence such as the interclass regions.
Paper Details
Date Published: 10 December 2014
PDF: 14 pages
Proc. SPIE 9261, Ocean Remote Sensing and Monitoring from Space, 92611R (10 December 2014); doi: 10.1117/12.2083730
Published in SPIE Proceedings Vol. 9261:
Ocean Remote Sensing and Monitoring from Space
Robert J. Frouin; Delu Pan; Hiroshi Murakami, Editor(s)
PDF: 14 pages
Proc. SPIE 9261, Ocean Remote Sensing and Monitoring from Space, 92611R (10 December 2014); doi: 10.1117/12.2083730
Show Author Affiliations
Florian de Boissieu, LOCEAN, CNRS (France)
Christophe Menkes, LOCEAN, IRD (France)
Cécile Dupouy, MIO, IRD (New Caledonia)
Martin Rodier, EIO, IRD (French Polynesia)
Christophe Menkes, LOCEAN, IRD (France)
Cécile Dupouy, MIO, IRD (New Caledonia)
Martin Rodier, EIO, IRD (French Polynesia)
Sophie Bonnet, MIO, IRD (New Caledonia)
Morgan Mangeas, ESPACE-DEV, IRD (France)
Robert J. Frouin, Scripps Institution of Oceanography, Univ. of California San Diego (United States)
Morgan Mangeas, ESPACE-DEV, IRD (France)
Robert J. Frouin, Scripps Institution of Oceanography, Univ. of California San Diego (United States)
Published in SPIE Proceedings Vol. 9261:
Ocean Remote Sensing and Monitoring from Space
Robert J. Frouin; Delu Pan; Hiroshi Murakami, Editor(s)
© SPIE. Terms of Use
