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Integrating the Strength of Multi-Date Sentinel-1 and -2 Datasets for Detecting Mango (Mangifera indica L.) Orchards in a Semi-Arid Environment in Zimbabwe

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dc.contributor.author Bester, Tawona Mudereri
dc.contributor.author Elfatih, Abdel-Rahman
dc.contributor.author Shepard, Ndlela
dc.contributor.author Louisa, Delfin Mutsa Makumbe
dc.contributor.author Christabel, Chiedza Nyanga
dc.contributor.author Henri, TONNANG
dc.contributor.author Samira, Abuelgasim Mohamed
dc.date.accessioned 2022-10-03T07:56:18Z
dc.date.available 2022-10-03T07:56:18Z
dc.date.issued 2022
dc.identifier.uri http://hdl.handle.net/20.500.12562/1711
dc.description NA en_US
dc.description.abstract Generating tree-specific crop maps within heterogeneous landscapes requires imagery of fine spatial and temporal resolutions to discriminate among the rapid transitions in tree phenological and spectral features. The availability of freely accessible satellite data of relatively high spatial and temporal resolutions offers an unprecedented opportunity for wide-area land use and land cover (LULC) mapping, including tree crop (e.g., mango; Mangifera indica L.) detection. We evaluated the utility of combining Sentinel-1 (S1) and Sentinel-2 (S2) derived variables (n = 81) for mapping mango orchard occurrence in Zimbabwe using machine learning classifiers, i.e., support vector machine and random forest. Field data were collected on mango orchards and other LULC classes. Fewer variables were selected from ‘All’ combined S1 and S2 variables using three commonly utilized variable selection methods, i.e., relief filter, guided regularized random forest, and variance inflation factor. Several classification experiments (n = 8) were conducted using 60% of field datasets and combinations of ‘All’ and fewer selected variables and were compared using the remaining 40% of the field dataset and the area underclass approach. The results showed that a combination of random forest and relief filter selected variables outperformed (F1 score > 70%) all other variable combination experiments. Notwithstanding, the differences among the mapping results were not significant (p ≤ 0.05). Specifically, the mapping accuracy of the mango orchards was more than 80% for each of the eight classification experiments. Results revealed that mango orchards occupied approximately 18% of the spatial extent of the study area. The S1 variables were constantly selected compared with the S2-derived variables across the three variable selection approaches used in this study. It is concluded that the use of multi-modal satellite imagery and robust machine learning classifiers can accurately detect mango orchards and other LULC classes in semi-arid environments. The results can be used for guiding and upscaling biological control options for man en_US
dc.description.sponsorship International Development Research Centre-Centre de recherches pou le developpement international (IDRC-CRDI) Australian Centre for International Agricultural Research (ACIAR) Swedish International Development Cooperation Agency (Sida) Swiss Agency for Development and Cooperation (SDC) Federal Democratic Republic of Ethiopia Government of the Republic of Kenya. en_US
dc.publisher MDPI - Sustainability en_US
dc.rights Attribution-NonCommercial-ShareAlike 3.0 United States *
dc.rights.uri http://creativecommons.org/licenses/by-nc-sa/3.0/us/ *
dc.subject Google Earth Engine (GEE) en_US
dc.subject land use and land cover (LULC) en_US
dc.subject machine learning en_US
dc.subject multi-algorithm classification en_US
dc.subject pest control en_US
dc.subject variable selection en_US
dc.subject SAR en_US
dc.title Integrating the Strength of Multi-Date Sentinel-1 and -2 Datasets for Detecting Mango (Mangifera indica L.) Orchards in a Semi-Arid Environment in Zimbabwe en_US
dc.type Article en_US


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