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Research article2015Peer reviewed

Development of a global hybrid forest mask through the synergy of remote sensing, crowdsourcing and FAO statistics

Schepaschenko, Dmitry; Salk, Carl; Ontikov, Petr

Abstract

A number of global and regional maps of forest extent are available, but when compared spatially, there are large areas of disagreement. Moreover, there is currently no global forest map that is consistent with forest statistics from FAO (Food and Agriculture Organization of the United Nations). By combining these diverse data sources into a single forest cover product, it is possible to produce a global forest map that is more accurate than the individual input layers and to produce a map that is consistent with FAO statistics. In this paper we applied geographically weighted regression (GWR) to integrate eight different forest products into three global hybrid forest cover maps at a 1 km resolution for the reference year 2000. Input products included global land cover and forest maps at varying resolutions from 30 m to 1 km, mosaics of regional land use/land cover products where available, and the MODIS Vegetation Continuous Fields product. The GWR was trained using crowdsourced data collected via the Geo-Wiki platform and the hybrid maps were then validated using an independent dataset collected via the same system. Three different hybrid maps were produced: two consistent with FAO statistics, one at the country and one at the regional level, and a "best guess" forest cover map that is independent of FAO. Independent validation showed that the "best guess" hybrid product had the best overall accuracy of 93% when compared with the individual input datasets. The global hybrid forest cover maps are available at http://biomass.geo-wild.org. (C) 2015 Elsevier Inc. All rights reserved.

Keywords

Forest cover; Geographically weighted regression; Crowdsourcing

Published in

Remote Sensing of Environment
2015, Volume: 162, pages: 208-220
Publisher: ELSEVIER SCIENCE INC

    UKÄ Subject classification

    Geosciences, Multidisciplinary

    Publication identifier

    DOI: https://doi.org/10.1016/j.rse.2015.02.011

    Permanent link to this page (URI)

    https://res.slu.se/id/publ/69545