Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series

We tested a supervised classification approach with Landsat 5 Thematic Mapper (TM) data for time-series mapping of seagrass in a subtropical lagoon. Seagrass meadows are an integral link between marine and inland ecosystems and are at risk from upstream processes such as runoff and erosion. Despite...

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Main Authors: Tara Blakey, Assefa Melesse, Margaret O. Hall
Format: Article
Language:English
Published: MDPI AG 2015-04-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/7/5/5098
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spelling doaj-4e6d047fe3db4ea0bf668977beaa8d592020-11-25T00:50:42ZengMDPI AGRemote Sensing2072-42922015-04-01755098511610.3390/rs70505098rs70505098Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time SeriesTara Blakey0Assefa Melesse1Margaret O. Hall2Department of Earth and Environment, Florida International University, Miami, FL 33199, USADepartment of Earth and Environment, Florida International University, Miami, FL 33199, USAFlorida Fish and Wildlife Research Institute, St. Petersburg, FL 33701, USAWe tested a supervised classification approach with Landsat 5 Thematic Mapper (TM) data for time-series mapping of seagrass in a subtropical lagoon. Seagrass meadows are an integral link between marine and inland ecosystems and are at risk from upstream processes such as runoff and erosion. Despite the prevalence of image-specific approaches, the classification accuracies we achieved show that pixel-based spectral classes may be generalized and applied to a time series of images that were not included in the classifier training. We employed in-situ data on seagrass abundance from 2007 to 2011 to train and validate a classification model. We created depth-invariant bands from TM bands 1, 2, and 3 to correct for variations in water column depth prior to building the classification model. In-situ data showed mean total seagrass cover remained relatively stable over the study area and period, with seagrass cover generally denser in the west than the east. Our approach achieved mapping accuracies (67% and 76% for two validation years) comparable with those attained using spectral libraries, but was simpler to implement. We produced a series of annual maps illustrating inter-annual variability in seagrass occurrence. Accuracies may be improved in future work by better addressing the spatial mismatch between pixel size of remotely sensed data and footprint of field data and by employing atmospheric correction techniques that normalize reflectances across images.http://www.mdpi.com/2072-4292/7/5/5098benthic reflectancesupervised classificationLandsatFlorida Bayseagrass landscapeslong-term monitoring
collection DOAJ
language English
format Article
sources DOAJ
author Tara Blakey
Assefa Melesse
Margaret O. Hall
spellingShingle Tara Blakey
Assefa Melesse
Margaret O. Hall
Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
Remote Sensing
benthic reflectance
supervised classification
Landsat
Florida Bay
seagrass landscapes
long-term monitoring
author_facet Tara Blakey
Assefa Melesse
Margaret O. Hall
author_sort Tara Blakey
title Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
title_short Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
title_full Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
title_fullStr Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
title_full_unstemmed Supervised Classification of Benthic Reflectance in Shallow Subtropical Waters Using a Generalized Pixel-Based Classifier across a Time Series
title_sort supervised classification of benthic reflectance in shallow subtropical waters using a generalized pixel-based classifier across a time series
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-04-01
description We tested a supervised classification approach with Landsat 5 Thematic Mapper (TM) data for time-series mapping of seagrass in a subtropical lagoon. Seagrass meadows are an integral link between marine and inland ecosystems and are at risk from upstream processes such as runoff and erosion. Despite the prevalence of image-specific approaches, the classification accuracies we achieved show that pixel-based spectral classes may be generalized and applied to a time series of images that were not included in the classifier training. We employed in-situ data on seagrass abundance from 2007 to 2011 to train and validate a classification model. We created depth-invariant bands from TM bands 1, 2, and 3 to correct for variations in water column depth prior to building the classification model. In-situ data showed mean total seagrass cover remained relatively stable over the study area and period, with seagrass cover generally denser in the west than the east. Our approach achieved mapping accuracies (67% and 76% for two validation years) comparable with those attained using spectral libraries, but was simpler to implement. We produced a series of annual maps illustrating inter-annual variability in seagrass occurrence. Accuracies may be improved in future work by better addressing the spatial mismatch between pixel size of remotely sensed data and footprint of field data and by employing atmospheric correction techniques that normalize reflectances across images.
topic benthic reflectance
supervised classification
Landsat
Florida Bay
seagrass landscapes
long-term monitoring
url http://www.mdpi.com/2072-4292/7/5/5098
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AT assefamelesse supervisedclassificationofbenthicreflectanceinshallowsubtropicalwatersusingageneralizedpixelbasedclassifieracrossatimeseries
AT margaretohall supervisedclassificationofbenthicreflectanceinshallowsubtropicalwatersusingageneralizedpixelbasedclassifieracrossatimeseries
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