Spatio-temporal mixed pixel analysis of savanna ecosystems : A review

GND
1248166817
ORCID
0000-0001-9351-370X
Zugehörigkeit
Department for Earth Observation, Friedrich Schiller University Jena, 07743 Jena, Germany; marcel.urban@uni-jena.de (M.U.); c.schmullius@uni-jena.de (C.S.)
Nghiyalwa, Hilma S.;
GND
1068941154
ORCID
0000-0002-0127-2804
Zugehörigkeit
Department for Earth Observation, Friedrich Schiller University Jena, 07743 Jena, Germany; marcel.urban@uni-jena.de (M.U.); c.schmullius@uni-jena.de (C.S.)
Urban, Marcel;
GND
122530179
ORCID
0000-0001-9878-7232
Zugehörigkeit
Department of Physical Geography, Friedrich Schiller University Jena, 07743 Jena, Germany; jussi.baade@uni-jena.de
Baade, Jussi;
GND
1248163982
Zugehörigkeit
Scientific Services, South African National Parks, Skukuza 0001, South Africa; izak.smit@sanparks.org
Smit, Izak P. J.;
ORCID
0000-0002-9917-9754
Zugehörigkeit
Centre for Environmental Studies, Department of Geography, Geoinformatics and Meteorology, University of Pretoria, Pretoria 0001, South Africa; Abel.ramoelo@up.ac.za
Ramoelo, Abel;
GND
1247581241
Zugehörigkeit
Centre for African Ecology, School of Animal, Plant and Environmental Sciences, University of the Witwatersrand, Johannesburg 2050, South Africa; buster@saeon.ac.za
Mogonong, Buster;
GND
1024689867
Zugehörigkeit
Department for Earth Observation, Friedrich Schiller University Jena, 07743 Jena, Germany; marcel.urban@uni-jena.de (M.U.); c.schmullius@uni-jena.de (C.S.)
Schmullius, Christiane

Reliable estimates of savanna vegetation constituents (i.e., woody and herbaceous vegetation) are essential as they are both responders and drivers of global change. The savanna is a highly heterogenous biome with high variability in land cover types while also being very dynamic at both temporal and spatial scales. To understand the spatial-temporal dynamics of savannas, using Earth Observation (EO) data for mixed-pixel analysis is crucial. Mixed pixel analysis provides detailed land cover data at a sub-pixel level which are essential for conservation purposes, understanding food supply for herbivores, quantifying environmental change, such as bush encroachment, and fuel availability essential for understanding fire dynamics, and for accurate estimation of savanna biomass. This review paper consulted 197 studies employing mixed-pixel analysis in savanna ecosystems. The review indicates that studies have so far attempted to resolve the savanna mixed-pixel issues by using mainly coarse resolution data, such as Terra-Aqua MODIS and AVHRR and medium resolution Landsat, to provide fractional cover data. Hence, there is a lack of spatio-temporal mixed-pixel analysis for savannas at high spatial resolutions. Methods used for mixed-pixel analysis include parametric and non-parametric methods which range from pixel-unmixing models, such as linear spectral mixture analysis (SMA), time series decomposition, empirical methods to link the green vegetation parameters with Vegetation Indices (VIs), and machine learning methods, such as regression trees (RT) and random forests (RF). Most studies were undertaken at local and regional scale, highlighting a research gap for savanna mixed pixel studies at national, continental, and global level. Parametric methods for modeling spatio-temporal mixed pixel analysis were preferred for coarse to medium resolution remote sensing data, while non-parametric methods were preferred for very high to high spatial resolution data. The review indicates a gap for long time series spatio-temporal mixed-pixel analysis of savannas using high resolution data at various scales. There is potential to harmonize the available low resolution EO data with new high-resolution sensors to provide long time series of the savanna mixed pixel, which, according to this review, is missing.

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