Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).

Giant kelp populations that support productive and diverse coastal ecosystems at temperate and subpolar latitudes of both hemispheres are vulnerable to changing climate conditions as well as direct human impacts. Observations of giant kelp forests are spatially and temporally uneven, with disproport...

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Main Authors: Henry F Houskeeper, Isaac S Rosenthal, Katherine C Cavanaugh, Camille Pawlak, Laura Trouille, Jarrett E K Byrnes, Tom W Bell, Kyle C Cavanaugh
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2022-01-01
Series:PLoS ONE
Online Access:https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0257933&type=printable
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author Henry F Houskeeper
Isaac S Rosenthal
Katherine C Cavanaugh
Camille Pawlak
Laura Trouille
Jarrett E K Byrnes
Tom W Bell
Kyle C Cavanaugh
author_facet Henry F Houskeeper
Isaac S Rosenthal
Katherine C Cavanaugh
Camille Pawlak
Laura Trouille
Jarrett E K Byrnes
Tom W Bell
Kyle C Cavanaugh
author_sort Henry F Houskeeper
collection DOAJ
description Giant kelp populations that support productive and diverse coastal ecosystems at temperate and subpolar latitudes of both hemispheres are vulnerable to changing climate conditions as well as direct human impacts. Observations of giant kelp forests are spatially and temporally uneven, with disproportionate coverage in the northern hemisphere, despite the size and comparable density of southern hemisphere kelp forests. Satellite imagery enables the mapping of existing and historical giant kelp populations in understudied regions, but automating the detection of giant kelp using satellite imagery requires approaches that are robust to the optical complexity of the shallow, nearshore environment. We present and compare two approaches for automating the detection of giant kelp in satellite datasets: one based on crowd sourcing of satellite imagery classifications and another based on a decision tree paired with a spectral unmixing algorithm (automated using Google Earth Engine). Both approaches are applied to satellite imagery (Landsat) of the Falkland Islands or Islas Malvinas (FLK), an archipelago in the southern Atlantic Ocean that supports expansive giant kelp ecosystems. The performance of each method is evaluated by comparing the automated classifications with a subset of expert-annotated imagery (8 images spanning the majority of our continuous timeseries, cumulatively covering over 2,700 km of coastline, and including all relevant sensors). Using the remote sensing approaches evaluated herein, we present the first continuous timeseries of giant kelp observations in the FLK region using Landsat imagery spanning over three decades. We do not detect evidence of long-term change in the FLK region, although we observe a recent decline in total canopy area from 2017-2021. Using a nitrate model based on nearby ocean state measurements obtained from ships and incorporating satellite sea surface temperature products, we find that the area of giant kelp forests in the FLK region is positively correlated with the nitrate content observed during the prior year. Our results indicate that giant kelp classifications using citizen science are approximately consistent with classifications based on a state-of-the-art automated spectral approach. Despite differences in accuracy and sensitivity, both approaches find high interannual variability that impedes the detection of potential long-term changes in giant kelp canopy area, although recent canopy area declines are notable and should continue to be monitored carefully.
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spelling doaj-art-2990c2ed401d4437ad8069dadab7ebbc2025-08-20T02:46:28ZengPublic Library of Science (PLoS)PLoS ONE1932-62032022-01-01171e025793310.1371/journal.pone.0257933Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).Henry F HouskeeperIsaac S RosenthalKatherine C CavanaughCamille PawlakLaura TrouilleJarrett E K ByrnesTom W BellKyle C CavanaughGiant kelp populations that support productive and diverse coastal ecosystems at temperate and subpolar latitudes of both hemispheres are vulnerable to changing climate conditions as well as direct human impacts. Observations of giant kelp forests are spatially and temporally uneven, with disproportionate coverage in the northern hemisphere, despite the size and comparable density of southern hemisphere kelp forests. Satellite imagery enables the mapping of existing and historical giant kelp populations in understudied regions, but automating the detection of giant kelp using satellite imagery requires approaches that are robust to the optical complexity of the shallow, nearshore environment. We present and compare two approaches for automating the detection of giant kelp in satellite datasets: one based on crowd sourcing of satellite imagery classifications and another based on a decision tree paired with a spectral unmixing algorithm (automated using Google Earth Engine). Both approaches are applied to satellite imagery (Landsat) of the Falkland Islands or Islas Malvinas (FLK), an archipelago in the southern Atlantic Ocean that supports expansive giant kelp ecosystems. The performance of each method is evaluated by comparing the automated classifications with a subset of expert-annotated imagery (8 images spanning the majority of our continuous timeseries, cumulatively covering over 2,700 km of coastline, and including all relevant sensors). Using the remote sensing approaches evaluated herein, we present the first continuous timeseries of giant kelp observations in the FLK region using Landsat imagery spanning over three decades. We do not detect evidence of long-term change in the FLK region, although we observe a recent decline in total canopy area from 2017-2021. Using a nitrate model based on nearby ocean state measurements obtained from ships and incorporating satellite sea surface temperature products, we find that the area of giant kelp forests in the FLK region is positively correlated with the nitrate content observed during the prior year. Our results indicate that giant kelp classifications using citizen science are approximately consistent with classifications based on a state-of-the-art automated spectral approach. Despite differences in accuracy and sensitivity, both approaches find high interannual variability that impedes the detection of potential long-term changes in giant kelp canopy area, although recent canopy area declines are notable and should continue to be monitored carefully.https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0257933&type=printable
spellingShingle Henry F Houskeeper
Isaac S Rosenthal
Katherine C Cavanaugh
Camille Pawlak
Laura Trouille
Jarrett E K Byrnes
Tom W Bell
Kyle C Cavanaugh
Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
PLoS ONE
title Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
title_full Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
title_fullStr Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
title_full_unstemmed Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
title_short Automated satellite remote sensing of giant kelp at the Falkland Islands (Islas Malvinas).
title_sort automated satellite remote sensing of giant kelp at the falkland islands islas malvinas
url https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0257933&type=printable
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