Abstract:
Small wetlands in East Africa have grown in prominence driven by the unreliable and diminished
rains and the increasing population pressure. Due to their size (less than 500 Ha), these wetlands
have not been studied extensively using satellite remote sensing approaches. High spatial resolu-
tion remote sensing approaches overcome this limitation allowing detailed inventorying and re-
search on such small wetlands. For understanding the seasonal variations in land cover within the
Malinda Wetland in Tanzania (350 Ha), two periods were considered, May 2012 coinciding with
the wet period (rainy season) and August 2012 coinciding with a fairly rain depressed period
(substantially dry but generally cooler season). The wetland was studied using very high spatial
resolution orthophotos derived from Unmanned Aerial Vehicle (UAV) photography fused with
TerraSAR-X Spotlight mode dual polarized radar data. Using these fused datasets, five main
classes were identified that were used to firstly delineate seasonal changes in land use activities
and secondly used in determining phenology changes. Combining fuzzy maximum likelihood clas-
sification, knowledge classifier and Change Vector Analysis (CVA), land cover classification was
undertaken for both seasons. From the results, manifold anthropogenic activities are taking place