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Global areas of low human impact ('Low Impact Areas') and fragmentation of the natural world | Scientific Reports
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The fuzzy similarity map and corresponding Fuzzy Kappa statistic, using... | Download Scientific Diagram
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ESSD - An improved global land cover mapping in 2015 with 30 m resolution (GLC-2015) based on a multisource product-fusion approach
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A high‐resolution bioclimate map of the world: a unifying framework for global biodiversity research and monitoring - Metzger - 2013 - Global Ecology and Biogeography - Wiley Online Library
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Full article: Comparison of a Sentinel-2 land cover map obtained through multi-temporal analysis with the official forest cartography. the case of Galicia (Spain)
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Global mapping of potential natural vegetation: an assessment of machine learning algorithms for estimating land potential [PeerJ]
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Map similarity between simulated and observed maps - a. Absolute: Kappa... | Download Scientific Diagram
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