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Tracking ecosystem stability across boreal Siberia<\/a><\/h3>02\/12\/2024<\/abbr><\/span><\/div>Forests around the world are under immense pressure from human land use and climate change, however vastly improved remote sensing techniques can help identify where forests are under greatest stress from a wide range of human-caused and climate risks. <\/div><\/div><\/article><\/div>
<\/a><\/div>Primary forest carbon key to achieving Europe’s Green Deal 2030<\/a><\/h3>14\/05\/2024<\/abbr><\/span><\/div>Restoration of forest ecosystems by allowing continued growth of regenerating forests, active restoration measures, and re-connecting fragmented remnants across landscapes, will provide crucial mitigation benefits that contribute to emissions reduction targets as well as existing and future co-benefits.<\/div><\/div><\/article><\/div>
<\/a><\/div>Mapping forest stability within major biomes using MODIS time series<\/a><\/h3>15\/09\/2022<\/abbr><\/span><\/div>Forest stability is a key component of ecosystem integrity and primary forests. Current remote sensing products largely focus on deforestation rather than forest degradation, and depend on machine learning calibrated with extensive field measurements. To address this, we used MODIS time series to develop a novel approach for mapping forest stability across forest biomes.<\/div><\/div><\/article><\/div>
Forests around the world are under immense pressure from human land use and climate change, however vastly improved remote sensing techniques can help identify where forests are under greatest stress from a wide range of human-caused and climate risks. <\/div><\/div><\/article><\/div>
<\/a><\/div>Primary forest carbon key to achieving Europe’s Green Deal 2030<\/a><\/h3>

Primary forest carbon key to achieving Europe’s Green Deal 2030<\/a><\/h3>14\/05\/2024<\/abbr><\/span><\/div>Restoration of forest ecosystems by allowing continued growth of regenerating forests, active restoration measures, and re-connecting fragmented remnants across landscapes, will provide crucial mitigation benefits that contribute to emissions reduction targets as well as existing and future co-benefits.<\/div><\/div><\/article><\/div>
<\/a><\/div>Mapping forest stability within major biomes using MODIS time series<\/a><\/h3>15\/09\/2022<\/abbr><\/span><\/div>Forest stability is a key component of ecosystem integrity and primary forests. Current remote sensing products largely focus on deforestation rather than forest degradation, and depend on machine learning calibrated with extensive field measurements. To address this, we used MODIS time series to develop a novel approach for mapping forest stability across forest biomes.<\/div><\/div><\/article><\/div>
Restoration of forest ecosystems by allowing continued growth of regenerating forests, active restoration measures, and re-connecting fragmented remnants across landscapes, will provide crucial mitigation benefits that contribute to emissions reduction targets as well as existing and future co-benefits.<\/div><\/div><\/article><\/div>
<\/a><\/div>Mapping forest stability within major biomes using MODIS time series<\/a><\/h3>
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Mapping forest stability within major biomes using MODIS time series<\/a><\/h3>15\/09\/2022<\/abbr><\/span><\/div>Forest stability is a key component of ecosystem integrity and primary forests. Current remote sensing products largely focus on deforestation rather than forest degradation, and depend on machine learning calibrated with extensive field measurements. To address this, we used MODIS time series to develop a novel approach for mapping forest stability across forest biomes.<\/div><\/div><\/article><\/div>
Forest stability is a key component of ecosystem integrity and primary forests. Current remote sensing products largely focus on deforestation rather than forest degradation, and depend on machine learning calibrated with extensive field measurements. To address this, we used MODIS time series to develop a novel approach for mapping forest stability across forest biomes.<\/div><\/div><\/article><\/div>