High Resolution Land Use Land Cover Classification using Landsat Earth Observation Data for the Continental Africa

Creators: Midekisa, Alemayehu and Bennet, Adam and Gething, Peter W and Holl, Felix and Andrade-Pacheco, Ricardo and Savory, David J and Hugh, SJ
Title: High Resolution Land Use Land Cover Classification using Landsat Earth Observation Data for the Continental Africa
Item Type: Conference or Workshop Item
Event Title: AGU Fall Meeting
Event Location: San Francisco, CA, USA
Event Dates: December, 12-16, 2016
Projects: GlobalHealthInformatics
Page Range: IN51B-1848
Date: 2016
Divisions: Gesundheitsmanagement
Abstract (ENG): Spatially detailed and temporally dynamic land use land cover data is necessary to monitor the state of the land surface for various applications. Yet, such data at a continental to global scale is lacking. Here, we developed high resolution (30 meter) annual land use land cover layers for the continental Africa using Google Earth Engine. To capture ground truth training data, high resolution satellite imageries were visually inspected and used to identify 7, 212 sample Landsat pixels that were comprised entirely of one of seven land use land cover classes (water, man-made impervious surface, high biomass, low biomass, rock, sand and bare soil). For model validation purposes, 80% of points from each class were used as training data, with 20% withheld as a validation dataset. Cloud free Landsat 7 annual composites for 2000 to 2015 were generated and spectral bands from the Landsat images were then extracted for each of the training and validation sample points. In addition to the Landsat spectral bands, spectral indices such as normalized difference vegetation index (NDVI) and normalized difference water index (NDWI) were used as covariates in the model. Additionally, calibrated night time light imageries from the National Oceanic and Atmospheric Administration (NOAA) were included as a covariate. A decision tree classification algorithm was applied to predict the 7 land cover classes for the periods 2000 to 2015 using the training dataset. Using the validation dataset, classification accuracy including omission error and commission error were computed for each land cover class. Model results showed that overall accuracy of classification was high (88%). This high resolution land cover product developed for the continental Africa will be available for public use and can potentially enhance the ability of monitoring and studying the state of the Earth's surface.
Forthcoming: No
Main areas or research: Health
Language: English
Citation:

Midekisa, Alemayehu and Bennet, Adam and Gething, Peter W and Holl, Felix and Andrade-Pacheco, Ricardo and Savory, David J and Hugh, SJ (2016) High Resolution Land Use Land Cover Classification using Landsat Earth Observation Data for the Continental Africa. In: AGU Fall Meeting, December, 12-16, 2016, San Francisco, CA, USA, IN51B-1848.

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