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Library Integrating local knowledge and remote sensing for eco-type classification map in the Barotse Floodplain, Zambia

Integrating local knowledge and remote sensing for eco-type classification map in the Barotse Floodplain, Zambia

Integrating local knowledge and remote sensing for eco-type classification map in the Barotse Floodplain, Zambia

Resource information

Date of publication
декабря 2018
Resource Language
ISBN / Resource ID
handle:10568/99382
License of the resource

This eco-type map presents land units with distinct vegetation and exposure to floods (or droughts) in three villages in the Barotseland, Zambia. The knowledge and eco-types descriptions were collected from participatory mapping and focus group discussions with 77 participants from Mapungu, Lealui, and Nalitoya. We used two Landsat 8 Enhanced Thematic Mapper (TM) images taken in March 24th and July 14th, 2014 (path 175, row 71) to calculate water level and vegetation type which are the two main criteria used by Lozi People for differentiating eco-types. We calculated water levels by using the Water Index (WI) and vegetation type by using the Normalized Difference Vegetation Index (NDVI). We also calculated the Normalized Burn Ratio (NBR) index. We excluded burned areas in 2014 and built areas to reduce classification error. Control points include field data from 99 farmers’ fields, 91 plots of 100 m2 and 65 waypoints randomly selected in a 6 km radius around each village. We also used Google Earth Pro to create control points in areas flooded year-round (e.g., deep waters and large canals), patches of forest and built areas. The eco-type map has a classification accuracy of 81% and a pixel resolution of 30 m. The eco-type map provides a useful resource for agriculture and conservation planning at the landscape level in the Barotse Floodplain.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Del Rio, T.
Groot, J.C.J.
DeClerck, F.
Estrada-Carmona, N.

Publisher(s)
Data Provider
Geographical focus