Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland

dc.contributor.advisorShoko, Moreblessings
dc.contributor.advisorSmit, Julian
dc.contributor.advisorDube, Timothy
dc.contributor.authorMusungu, Kevin
dc.date.accessioned2025-09-16T12:47:24Z
dc.date.available2025-09-16T12:47:24Z
dc.date.issued2025
dc.date.updated2025-09-16T12:43:57Z
dc.description.abstractTraditional methods for mapping plant species necessitate fieldwork and labour-intensive estimation of proportionate cover of the species under study. However, the inundated nature of wetlands makes fieldwork significantly difficult, costly, and prone to inaccurate estimations. In comparison, remote sensing technology offers a less resource-intensive approach, and multitemporal observations can enable species identification and monitoring. Among the remote sensing sensors, unmanned aerial vehicles (UAVs) have gained global prominence as affordable platforms for vegetation inventory studies. However, the potential use of UAVs for Fynbos wetland inventory has not been explored. This study used multispectral UAV photography from Parrot Sequoia and Micasense RedEdge- M multispectral cameras to discriminate eleven wetland Fynbos plant species in a seep wetland located in the Steenbras Nature Reserve in the Western Cape province of South Africa. The UAV multispectral data was gathered over six dates (August 2018, October 2018, December 2018, February 2019, April 2019, and February 2020) spanning three seasons and used to extract the multitemporal spectral signatures of the plant species. Then, critical spectral indices were identified based on the plant spectral signatures and ensemble feature selection. Of the twenty-seven indices assessed, the Visible Atmospherically Resistant Index (VARI), Modified Soil Adjusted Vegetation Index 2 (MSAVI2) and two indices developed in this study, namely, Red Green Vegetation Index (RG) and Log Red Edge (LogRed) were found to be pertinent for the classification. Three machine learning classifiers comprising Random Forest, K Nearest Neighbour, and Support Vector Machines were used to classify the different plant species across all dates using a dataset consisting of only spectral bands and another consisting of key spectral bands and indices. Classification accuracies improved when spectral indices were integrated with the spectral bands. Random Forest proved the most reliable, with generally better overall and per- class accuracies than the other machine learning classifiers. Lastly, the study assessed the effect of seasonal variability on the per-class performance of the machine learning classifiers and identified Spring as the optimum time of year for the classification of most of the plant species. This study highlights the potential of UAV data for inventory in heterogenous Fynbos wetlands.
dc.identifier.apacitationMusungu, K. (2025). <i>Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland</i>. (). University of Cape Town ,Faculty of Engineering and the Built Environment ,School of Architecture, Planning and Geomatics. Retrieved from http://hdl.handle.net/11427/41831en_ZA
dc.identifier.chicagocitationMusungu, Kevin. <i>"Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland."</i> ., University of Cape Town ,Faculty of Engineering and the Built Environment ,School of Architecture, Planning and Geomatics, 2025. http://hdl.handle.net/11427/41831en_ZA
dc.identifier.citationMusungu, K. 2025. Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland. . University of Cape Town ,Faculty of Engineering and the Built Environment ,School of Architecture, Planning and Geomatics. http://hdl.handle.net/11427/41831en_ZA
dc.identifier.ris TY - Thesis / Dissertation AU - Musungu, Kevin AB - Traditional methods for mapping plant species necessitate fieldwork and labour-intensive estimation of proportionate cover of the species under study. However, the inundated nature of wetlands makes fieldwork significantly difficult, costly, and prone to inaccurate estimations. In comparison, remote sensing technology offers a less resource-intensive approach, and multitemporal observations can enable species identification and monitoring. Among the remote sensing sensors, unmanned aerial vehicles (UAVs) have gained global prominence as affordable platforms for vegetation inventory studies. However, the potential use of UAVs for Fynbos wetland inventory has not been explored. This study used multispectral UAV photography from Parrot Sequoia and Micasense RedEdge- M multispectral cameras to discriminate eleven wetland Fynbos plant species in a seep wetland located in the Steenbras Nature Reserve in the Western Cape province of South Africa. The UAV multispectral data was gathered over six dates (August 2018, October 2018, December 2018, February 2019, April 2019, and February 2020) spanning three seasons and used to extract the multitemporal spectral signatures of the plant species. Then, critical spectral indices were identified based on the plant spectral signatures and ensemble feature selection. Of the twenty-seven indices assessed, the Visible Atmospherically Resistant Index (VARI), Modified Soil Adjusted Vegetation Index 2 (MSAVI2) and two indices developed in this study, namely, Red Green Vegetation Index (RG) and Log Red Edge (LogRed) were found to be pertinent for the classification. Three machine learning classifiers comprising Random Forest, K Nearest Neighbour, and Support Vector Machines were used to classify the different plant species across all dates using a dataset consisting of only spectral bands and another consisting of key spectral bands and indices. Classification accuracies improved when spectral indices were integrated with the spectral bands. Random Forest proved the most reliable, with generally better overall and per- class accuracies than the other machine learning classifiers. Lastly, the study assessed the effect of seasonal variability on the per-class performance of the machine learning classifiers and identified Spring as the optimum time of year for the classification of most of the plant species. This study highlights the potential of UAV data for inventory in heterogenous Fynbos wetlands. DA - 2025 DB - OpenUCT DP - University of Cape Town KW - Unmanned Aerial Vehicles KW - Fynbos Wetlands KW - Spectral Indices KW - Machine Learning LK - https://open.uct.ac.za PB - University of Cape Town PY - 2025 T1 - Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland TI - Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland UR - http://hdl.handle.net/11427/41831 ER - en_ZA
dc.identifier.urihttp://hdl.handle.net/11427/41831
dc.identifier.vancouvercitationMusungu K. Evaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland. []. University of Cape Town ,Faculty of Engineering and the Built Environment ,School of Architecture, Planning and Geomatics, 2025 [cited yyyy month dd]. Available from: http://hdl.handle.net/11427/41831en_ZA
dc.language.isoen
dc.language.rfc3066eng
dc.publisher.departmentSchool of Architecture, Planning and Geomatics
dc.publisher.facultyFaculty of Engineering and the Built Environment
dc.publisher.institutionUniversity of Cape Town
dc.subjectUnmanned Aerial Vehicles
dc.subjectFynbos Wetlands
dc.subjectSpectral Indices
dc.subjectMachine Learning
dc.titleEvaluating the suitability of UAV data for mapping dominant plant species in a heterogenous fynbos seep wetland
dc.typeThesis / Dissertation
dc.type.qualificationlevelDoctoral
dc.type.qualificationlevelPhD
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