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Producing Composite Imagery and Forest Cover and Change Characterizations for the Humid Tropics - A Contribution to the MDGLS Activity
Project Start Date
06/01/2008
Project End Date
05/31/2010
Project Call Name
Regional_Initiative_Name
Solicitation
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Team Members:

Person Name Person role on project Affiliation
Matthew Hansen Principal Investigator University of Maryland, College Park, College Park, United States
Abstract

This project demonstrates a new approach that uses regional/continental MODIS (MODerate Resolution Imaging Spectroradiometer) derived forest cover products to calibrate Landsat data for exhaustive high spatial resolution mapping of forest cover and clearing in the Congo River Basin. The approach employs multi-temporal Landsat acquisitions to account for cloud cover, a primary limiting factor in humid tropical forest mapping. A Basin-wide MODIS 250m Vegetation Continuous Field (VCF) percent tree cover product is used as a regionally consistent reference data set to train Landsat imagery. The approach is automated and greatly shortens mapping time. Derived high spatial resolution forest change estimates indicate that just over one percent of the forests were cleared from 1990 to 2000. However, forest clearing is spatially pervasive and fragmented in the landscapes studied to date, with implications for sustaining the region’s biodiversity. The forest cover and change data are being used by the Central African Regional Program for the Environment (CARPE) program to study deforestation and biodiversity loss in the Congo Basin forest zone. Data available: http://carpe.umd.edu.