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Remote sensing of leaf area index in Savannah grass using inversion of radiative transfer model on Landsat 8 imagery : case study Mpumalanga, South Africa

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dc.contributor.advisor Cho, Moses Azong
dc.contributor.advisor Jordaan, Marten
dc.contributor.author Masemola, Cecilia Ramakgahlele
dc.date.accessioned 2015-11-24T09:26:07Z
dc.date.available 2015-11-24T09:26:07Z
dc.date.issued 2015-03
dc.identifier.citation Masemola, Cecilia Ramakgahlele (2015) Remote sensing of leaf area index in Savannah grass using inversion of radiative transfer model on Landsat 8 imagery: case study Mpumalanga, South Africa, University of South Africa, Pretoria, <http://hdl.handle.net/10500/19734> en
dc.identifier.uri http://hdl.handle.net/10500/19734
dc.description.abstract Savannahs regulate an agro-ecosystem crucial for the production of domestic livestock, one of the main sources of income worldwide as well as in South African rural communities. Nevertheless, globally these ecosystem functions are threatened by intense human exploitation, inappropriate land use and environmental changes. Leaf area index (LAI) defined as one half the total green leaf area per unit ground surface area, is an inventory of the plant green leaves that defines the actual size of the interface between the vegetation and the atmosphere. Thus, LAI spatial data could serve as an indicator of rangeland productivity. Consequently, the accurate and rapid estimation of LAI is a key requirement for farmers and policy makers to devise sustainable management strategies for rangeland resources. In this study, the main focus was to assess the utility and the accuracy of the PROSAILH radiative transfer model (RTM) to estimate LAI in the South African rangeland on the recently launched Landsat 8 sensor data. The Landsat 8 sensor has been a promising sensor for estimating grassland LAI as compared to its predecessors Landsat 5 to 7 sensors because of its increased radiometric resolution. For this purpose, two PROSAIL inversion methods and semi- empirical methods such as Normalized difference vegetation index (NDVI) were utilized to estimate LAI. The results showed that physically based approaches surpassed empirical approach with highest accuracy yielded by artificial neural network (ANN) inversion approach (RMSE=0.138), in contrast to the Look-Up Table (LUT) approach (RMSE=0.265). In conclusion, the results of this study proved that PROSAIL RTM approach on Landsat 8 data could be utilized to accurately estimate LAI at regional scale which could aid in rapid assessment and monitoring of the rangeland resources. en
dc.format.extent 1 online resource (ix, 65 leaves) : color illustrations, color maps
dc.language.iso en en
dc.subject Leaf area index (LAI) en
dc.subject Radiative transfer models en
dc.subject PROSAIL en
dc.subject LUT en
dc.subject ANN en
dc.subject Vegetation indices en
dc.subject Empirical methods en
dc.subject Landsat 8 imagery en
dc.subject.ddc 577.4096827
dc.subject.lcsh Leaf area index -- South Africa -- Mpumalanga
dc.subject.lcsh Savanna ecology -- South Africa -- Mpumalanga
dc.subject.lcsh Remote sensing -- South Africa -- Mpumalanga
dc.subject.lcsh Landsat satellites
dc.subject.lcsh Grassland ecology -- South Africa -- Mpumalanga
dc.subject.lcsh Grassland conservation -- South Africa -- Mpumalanga
dc.subject.lcsh Biodiversity conservation -- South Africa -- Mpumalanga
dc.subject.lcsh Ecosystem management -- South Africa -- Mpumalanga
dc.subject.lcsh Radiative transitions
dc.title Remote sensing of leaf area index in Savannah grass using inversion of radiative transfer model on Landsat 8 imagery : case study Mpumalanga, South Africa en
dc.type Dissertation en
dc.description.department Environmental Sciences
dc.description.degree M. Sc. (Environmental Science)


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