Using remote sensing in support of environmental management: A framework for selecting products, algorithms and methods

Traditionally, to map environmental features using remote sensing, practitioners will use training data to develop models on various satellite data sets using a number of classification approaches and use test data to select a single ‘best performer’ from which the final map is made. We use a combin...

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Veröffentlicht in:Journal of environmental management 2016-11, Vol.182, p.564-573
Hauptverfasser: de Klerk, Helen M., Gilbertson, Jason, Lück-Vogel, Melanie, Kemp, Jaco, Munch, Zahn
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container_end_page 573
container_issue
container_start_page 564
container_title Journal of environmental management
container_volume 182
creator de Klerk, Helen M.
Gilbertson, Jason
Lück-Vogel, Melanie
Kemp, Jaco
Munch, Zahn
description Traditionally, to map environmental features using remote sensing, practitioners will use training data to develop models on various satellite data sets using a number of classification approaches and use test data to select a single ‘best performer’ from which the final map is made. We use a combination of an omission/commission plot to evaluate various results and compile a probability map based on consistently strong performing models across a range of standard accuracy measures. We suggest that this easy-to-use approach can be applied in any study using remote sensing to map natural features for management action. We demonstrate this approach using optical remote sensing products of different spatial and spectral resolution to map the endemic and threatened flora of quartz patches in the Knersvlakte, South Africa. Quartz patches can be mapped using either SPOT 5 (used due to its relatively fine spatial resolution) or Landsat8 imagery (used because it is freely accessible and has higher spectral resolution). Of the variety of classification algorithms available, we tested maximum likelihood and support vector machine, and applied these to raw spectral data, the first three PCA summaries of the data, and the standard normalised difference vegetation index. We found that there is no ‘one size fits all’ solution to the choice of a ‘best fit’ model (i.e. combination of classification algorithm or data sets), which is in agreement with the literature that classifier performance will vary with data properties. We feel this lends support to our suggestion that rather than the identification of a ‘single best’ model and a map based on this result alone, a probability map based on the range of consistently top performing models provides a rigorous solution to environmental mapping. •An approach and a framework to guide environmental managers in the use of remote sensing to solve environmental questions is presented.•Rather than arguing for a single “best” classification algorithm, approach, data set or sensor, we provide a framework for evaluating likely candidates.•Omission/commission plot with cut-off values are used together with overall accuracy and kappa as a framework to identify the top-performing analyses from the candidates.•Creation of a probability map from the top-performers is recommended rather than relying on a single ‘best’ (winner takes all) output.•We demonstrate this approach and framework by using remote sensing to map rare and isolated envir
doi_str_mv 10.1016/j.jenvman.2016.07.073
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We feel this lends support to our suggestion that rather than the identification of a ‘single best’ model and a map based on this result alone, a probability map based on the range of consistently top performing models provides a rigorous solution to environmental mapping. •An approach and a framework to guide environmental managers in the use of remote sensing to solve environmental questions is presented.•Rather than arguing for a single “best” classification algorithm, approach, data set or sensor, we provide a framework for evaluating likely candidates.•Omission/commission plot with cut-off values are used together with overall accuracy and kappa as a framework to identify the top-performing analyses from the candidates.•Creation of a probability map from the top-performers is recommended rather than relying on a single ‘best’ (winner takes all) output.•We demonstrate this approach and framework by using remote sensing to map rare and isolated environmental features over large areas.</description><subject>Accuracy</subject><subject>Algorithms</subject><subject>Cluster Analysis</subject><subject>Conservation of Natural Resources - methods</subject><subject>Environment</subject><subject>Environmental management</subject><subject>Environmental management mapping</subject><subject>Environmental Monitoring - methods</subject><subject>Geography</subject><subject>Knersvlakte</subject><subject>Likelihood Functions</subject><subject>Object-oriented classification</subject><subject>Probability</subject><subject>Probability map</subject><subject>Remote sensing</subject><subject>Remote Sensing Technology - methods</subject><subject>Reproducibility of Results</subject><subject>South Africa</subject><subject>Vegetation</subject><issn>0301-4797</issn><issn>1095-8630</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2016</creationdate><recordtype>article</recordtype><sourceid>EIF</sourceid><recordid>eNqNkU1v1DAQhi1ERZfCTwBZ4sKBLP52wqWqKj4qVeqFni3HmWwdEnuxk1b8exx24cCllUayRnredzzzIvSGki0lVH0ctgOE-8mGLSvtluhS_BnaUNLIqlacPEcbwgmthG70KXqZ80AI4YzqF-iUaSm4lnSDHm6zDzucYIoz4AzhT-sDzst-H9OMY4_LHJ9imCDMdsRlpN3B2nzCF7hPdoKHmH7gPqaiH8HNq8M-xW5xc_6A7biLyc93U8Y2dHiC-S52-RU66e2Y4fXxPUO3Xz5_v_xWXd98vbq8uK6ckM1cNYpyBq2iUDdOMdva3tat7phykoqykGC9cFJ1qrfKyo4Lq1tBW61ACEkdP0PvD77lQz8XyLOZfHYwjjZAXLKhNZeEU1mO9zjKdN0wwuUTUKpqJaRqCvruP3SISwpl59WQEcWI4IWSB8qlmHOC3uyTn2z6ZSgxa95mMMe8zZq3IbrUqnt7dF_aCbp_qr8BF-D8AEA58r2HZLLzEBx0PpWoTBf9IyN-A5wKvvU</recordid><startdate>20161101</startdate><enddate>20161101</enddate><creator>de Klerk, Helen M.</creator><creator>Gilbertson, Jason</creator><creator>Lück-Vogel, Melanie</creator><creator>Kemp, Jaco</creator><creator>Munch, Zahn</creator><general>Elsevier Ltd</general><general>Academic Press Ltd</general><scope>CGR</scope><scope>CUY</scope><scope>CVF</scope><scope>ECM</scope><scope>EIF</scope><scope>NPM</scope><scope>AAYXX</scope><scope>CITATION</scope><scope>7QH</scope><scope>7SN</scope><scope>7ST</scope><scope>7UA</scope><scope>8BJ</scope><scope>C1K</scope><scope>F1W</scope><scope>FQK</scope><scope>H97</scope><scope>JBE</scope><scope>L.G</scope><scope>SOI</scope><scope>7X8</scope><orcidid>https://orcid.org/0000-0003-1628-352X</orcidid></search><sort><creationdate>20161101</creationdate><title>Using remote sensing in support of environmental management: A framework for selecting products, algorithms and methods</title><author>de Klerk, Helen M. ; 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We feel this lends support to our suggestion that rather than the identification of a ‘single best’ model and a map based on this result alone, a probability map based on the range of consistently top performing models provides a rigorous solution to environmental mapping. •An approach and a framework to guide environmental managers in the use of remote sensing to solve environmental questions is presented.•Rather than arguing for a single “best” classification algorithm, approach, data set or sensor, we provide a framework for evaluating likely candidates.•Omission/commission plot with cut-off values are used together with overall accuracy and kappa as a framework to identify the top-performing analyses from the candidates.•Creation of a probability map from the top-performers is recommended rather than relying on a single ‘best’ (winner takes all) output.•We demonstrate this approach and framework by using remote sensing to map rare and isolated environmental features over large areas.</abstract><cop>England</cop><pub>Elsevier Ltd</pub><pmid>27543751</pmid><doi>10.1016/j.jenvman.2016.07.073</doi><tpages>10</tpages><orcidid>https://orcid.org/0000-0003-1628-352X</orcidid></addata></record>
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subjects Accuracy
Algorithms
Cluster Analysis
Conservation of Natural Resources - methods
Environment
Environmental management
Environmental management mapping
Environmental Monitoring - methods
Geography
Knersvlakte
Likelihood Functions
Object-oriented classification
Probability
Probability map
Remote sensing
Remote Sensing Technology - methods
Reproducibility of Results
South Africa
Vegetation
title Using remote sensing in support of environmental management: A framework for selecting products, algorithms and methods
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