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Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine

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dc.contributor.author Bessinger, M
dc.contributor.author Lück-Vogel, Melanie
dc.contributor.author Skowno, A
dc.contributor.author Conrad, F
dc.date.accessioned 2022-12-02T10:12:49Z
dc.date.available 2022-12-02T10:12:49Z
dc.date.issued 2022-11
dc.identifier.citation Bessinger, M., Lück-Vogel, M., Skowno, A. & Conrad, F. 2022. Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine. <i>South African Journal of Botany, 150.</i> http://hdl.handle.net/10204/12554 en_ZA
dc.identifier.issn 0254-6299
dc.identifier.issn 1727-9321
dc.identifier.uri https://doi.org/10.1016/j.sajb.2022.08.014
dc.identifier.uri http://hdl.handle.net/10204/12554
dc.description.abstract Coastlines worldwide are home to an increasing number of people and are subject to many pressures. This, combined with natural dynamics and hazards, often results in the degradation of coastal and marine ecosystems and infrastructure. Therefore, it is necessary to adopt effective management strategies to ensure sustainable use of coastal ecosystems, which requires up-to-date data on the extent of coastal ecosystems. This research aimed to create a coastal ecosystem land cover map for South Africa using the random forest algorithm to classify Landsat 8 imagery. Processing was done using the Google Earth Engine platform. A total of 522 Landsat 8 images were called to create a median image for classification. The impact of the number of trees, the number of variables per split, and variable selection on overall classification accuracy and Kappa values were evaluated. This was done by increasing the number of trees from 100 to 500 with increments of 100, setting the number of variables per split to three, four or five, and reducing the number of input variables from the original 18 variables, to the 10 most important variables, to the 5 most important variables, based on variable importance scores. Results suggest that the number of input variables used in the model had a greater impact on accuracy than the number of trees used, or the number of variables used per split. The average overall accuracy was 82.28%, with values ranging between 75.33% and 86.70%, while the average Kappa was 0.8068 and values ranged between 0.7310 and 0.8550. The model with the highest overall accuracy was the model using all input variables, 500 trees, and three variables per split. A major challenge was the misclassification of certain vegetation classes due to the complex successional mosaic they form, causing mixed signals and generally lower classification accuracy. Despite model limitations, results were satisfactory and have shown that coastal land cover classification and monitoring could be aided by the rapid classification of Landsat 8 imagery in Google Earth Engine using the random forest algorithm. en_US
dc.format Abstract en_US
dc.language.iso en en_US
dc.relation.uri https://www.sciencedirect.com/science/article/pii/S0254629922004331 en_US
dc.source South African Journal of Botany, 150 en_US
dc.subject Ecosystem-based classification en_US
dc.subject Coastal mapping en_US
dc.subject Conservation planning en_US
dc.subject Random forest en_US
dc.subject Remote sensing en_US
dc.subject Spatial planning en_US
dc.title Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine en_US
dc.type Article en_US
dc.description.pages 928-939 en_US
dc.description.note © 2022 SAAB. Published by Elsevier B.V. All rights reserved. Due to copyright restrictions, the attached PDF file only contains the abstract of the full text item. For access to the full text item, please consult the publisher's website: https://www.sciencedirect.com/science/article/pii/S0254629922004331 en_US
dc.description.cluster Smart Places en_US
dc.description.impactarea Coastal Systems en_US
dc.identifier.apacitation Bessinger, M., Lück-Vogel, M., Skowno, A., & Conrad, F. (2022). Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine. <i>South African Journal of Botany, 150</i>, http://hdl.handle.net/10204/12554 en_ZA
dc.identifier.chicagocitation Bessinger, M, Melanie Lück-Vogel, A Skowno, and F Conrad "Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine." <i>South African Journal of Botany, 150</i> (2022) http://hdl.handle.net/10204/12554 en_ZA
dc.identifier.vancouvercitation Bessinger M, Lück-Vogel M, Skowno A, Conrad F. Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine. South African Journal of Botany, 150. 2022; http://hdl.handle.net/10204/12554. en_ZA
dc.identifier.ris TY - Article AU - Bessinger, M AU - Lück-Vogel, Melanie AU - Skowno, A AU - Conrad, F AB - Coastlines worldwide are home to an increasing number of people and are subject to many pressures. This, combined with natural dynamics and hazards, often results in the degradation of coastal and marine ecosystems and infrastructure. Therefore, it is necessary to adopt effective management strategies to ensure sustainable use of coastal ecosystems, which requires up-to-date data on the extent of coastal ecosystems. This research aimed to create a coastal ecosystem land cover map for South Africa using the random forest algorithm to classify Landsat 8 imagery. Processing was done using the Google Earth Engine platform. A total of 522 Landsat 8 images were called to create a median image for classification. The impact of the number of trees, the number of variables per split, and variable selection on overall classification accuracy and Kappa values were evaluated. This was done by increasing the number of trees from 100 to 500 with increments of 100, setting the number of variables per split to three, four or five, and reducing the number of input variables from the original 18 variables, to the 10 most important variables, to the 5 most important variables, based on variable importance scores. Results suggest that the number of input variables used in the model had a greater impact on accuracy than the number of trees used, or the number of variables used per split. The average overall accuracy was 82.28%, with values ranging between 75.33% and 86.70%, while the average Kappa was 0.8068 and values ranged between 0.7310 and 0.8550. The model with the highest overall accuracy was the model using all input variables, 500 trees, and three variables per split. A major challenge was the misclassification of certain vegetation classes due to the complex successional mosaic they form, causing mixed signals and generally lower classification accuracy. Despite model limitations, results were satisfactory and have shown that coastal land cover classification and monitoring could be aided by the rapid classification of Landsat 8 imagery in Google Earth Engine using the random forest algorithm. DA - 2022-11 DB - ResearchSpace DP - CSIR J1 - South African Journal of Botany, 150 KW - Ecosystem-based classification KW - Coastal mapping KW - Conservation planning KW - Random forest KW - Remote sensing KW - Spatial planning LK - https://researchspace.csir.co.za PY - 2022 SM - 0254-6299 SM - 1727-9321 T1 - Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine TI - Landsat-8 based coastal ecosystem mapping in South Africa using random forest classification in Google Earth Engine UR - http://hdl.handle.net/10204/12554 ER - en_ZA
dc.identifier.worklist 26022 en_US


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