First assessment of optical and microwave remotely sensed vegetation proxies in monitoring aboveground carbon in tropical Asia
暂无分享,去创建一个
P. Ciais | J. Wigneron | R. Fensholt | J. Chave | S. Sitch | M. Ma | F. Frappart | Xiangzhuo Liu | Xiaojun Li | L. Fan | Mengjia Wang | Zhongbing Chang | Tianxiang Cui
[1] P. Ciais,et al. Siberian carbon sink reduced by forest disturbances , 2022, Nature Geoscience.
[2] P. Ciais,et al. The first global soil moisture and vegetation optical depth product retrieved from fused SMOS and SMAP L-band observations , 2022, Remote Sensing of Environment.
[3] S. Goetz,et al. GEDI launches a new era of biomass inference from space , 2022, Environmental Research Letters.
[4] Yuhao Feng,et al. Ecological restoration programs dominate vegetation greening in China. , 2022, The Science of the total environment.
[5] P. Ciais,et al. A new SMAP soil moisture and vegetation optical depth product (SMAP-IB): Algorithm, assessment and inter-comparison , 2022, Remote Sensing of Environment.
[6] Joanne C. White,et al. Aboveground biomass density models for NASA’s Global Ecosystem Dynamics Investigation (GEDI) lidar mission , 2022, Remote Sensing of Environment.
[7] J. Canadell,et al. Large loss and rapid recovery of vegetation cover and aboveground biomass over forest areas in Australia during 2019–2020 , 2022, Remote Sensing of Environment.
[8] Susan G. Letcher,et al. Multidimensional tropical forest recovery , 2021, Science.
[9] J. Wigneron,et al. Evaluation of six satellite- and model-based surface soil temperature datasets using global ground-based observations , 2021 .
[10] P. Ciais,et al. ASCAT IB: A radar-based vegetation optical depth retrieved from the ASCAT scatterometer satellite , 2021 .
[11] Yi Y. Liu,et al. An alternative AMSR2 vegetation optical depth for monitoring vegetation at large scales , 2021 .
[12] S. Jansen,et al. Hydraulic prediction of drought-induced plant dieback and top-kill depends on leaf habit and growth form. , 2021, Ecology letters.
[13] P. Ciais,et al. Carbon loss from forest degradation exceeds that from deforestation in the Brazilian Amazon , 2021, Nature Climate Change.
[14] G. Lannoy,et al. SMOS-IC data record of soil moisture and L-VOD: Historical development, applications and perspectives , 2021, Remote Sensing of Environment.
[15] S. Quegan,et al. Mapping above-ground biomass in tropical forests with ground-cancelled P-band SAR and limited reference data , 2020, Remote Sensing of Environment.
[16] Kelly K. Caylor,et al. Deforestation-induced warming over tropical mountain regions regulated by elevation , 2020, Nature Geoscience.
[17] P. Ciais,et al. Global-scale assessment and inter-comparison of recently developed/reprocessed microwave satellite vegetation optical depth products , 2020 .
[18] Binbin He,et al. Woody vegetation cover, height and biomass at 25-m resolution across Australia derived from multiple site, airborne and satellite observations , 2020, Int. J. Appl. Earth Obs. Geoinformation.
[19] I. Theilade,et al. The impact of deforestation on collection and domestication of Jernang (Daemonorops spp.) and other NTFPs in southern Sumatra, Indonesia , 2020 .
[20] Jean-Pierre Wigneron,et al. Global Monitoring of the Vegetation Dynamics from the Vegetation Optical Depth (VOD): A Review , 2020, Remote. Sens..
[21] Atul K. Jain,et al. Direct and seasonal legacy effects of the 2018 heat wave and drought on European ecosystem productivity , 2020, Science Advances.
[22] Scott J. Goetz,et al. The Global Ecosystem Dynamics Investigation: High-resolution laser ranging of the Earth’s forests and topography , 2020, Science of Remote Sensing.
[23] Stefano Tebaldini,et al. Interferometric Ground Cancellation for Above Ground Biomass Estimation , 2020, IEEE Transactions on Geoscience and Remote Sensing.
[24] P. Ciais,et al. Tropical forests did not recover from the strong 2015–2016 El Niño event , 2020, Science Advances.
[25] P. Ciais,et al. Forest management in southern China generates short term extensive carbon sequestration , 2020, Nature Communications.
[26] Anne D. Bjorkman,et al. Complexity revealed in the greening of the Arctic , 2019, Nature Climate Change.
[27] F. Frappart,et al. Compared performances of SMOS-IC soil moisture and vegetation optical depth retrievals based on Tau-Omega and Two-Stream microwave emission models , 2020 .
[28] M. Piles,et al. Simultaneous retrieval of global scale Vegetation Optical Depth, surface roughness, and soil moisture using X-band AMSR-E observations , 2019 .
[29] M. Piles,et al. Sensitivity of L-band vegetation optical depth to carbon stocks in tropical forests: a comparison to higher frequencies and optical indices , 2019, Remote Sensing of Environment.
[30] Arnaud Mialon,et al. Satellite-observed pantropical carbon dynamics , 2019, Nature Plants.
[31] Klaus Scipal,et al. The European Space Agency BIOMASS mission: Measuring forest above-ground biomass from space , 2019, Remote Sensing of Environment.
[32] W. Bond,et al. The worst drought in 50 years in a South African savannah: Limited impact on vegetation , 2019, African Journal of Ecology.
[33] Lia Hemerik,et al. Amazonian rainforest tree mortality driven by climate and functional traits , 2019, Nature Climate Change.
[34] Irene E. Teubner,et al. The Global Long-term Microwave Vegetation Optical Depth Climate Archive VODCA , 2019, Earth System Science Data.
[35] V. Brovkin,et al. China and India lead in greening of the world through land-use management , 2019, Nature Sustainability.
[36] A. Ducharne,et al. Multi-source global wetland maps combining surface water imagery and groundwater constraints , 2018, Earth System Science Data.
[37] Dirk Pflugmacher,et al. Unravelling the link between global rubber price and tropical deforestation in Cambodia , 2018, Nature Plants.
[38] P. Palmer. The role of satellite observations in understanding the impact of El Niño on the carbon cycle: current capabilities and future opportunities , 2018, Philosophical Transactions of the Royal Society B: Biological Sciences.
[39] L. Aragão,et al. New insights into the variability of the tropical land carbon cycle from the El Niño of 2015/2016 , 2018, Philosophical Transactions of the Royal Society B: Biological Sciences.
[40] F. Frappart,et al. Influence of recent climatic events on the surface water storage of the Tonle Sap Lake. , 2018, The Science of the total environment.
[41] Marcos Longo,et al. El Niño drought increased canopy turnover in Amazon forests. , 2018, The New phytologist.
[42] Yadvinder Malhi,et al. Drivers and mechanisms of tree mortality in moist tropical forests. , 2018, The New phytologist.
[43] A. Al Bitar,et al. An evaluation of SMOS L-band vegetation optical depth (L-VOD) data sets: high sensitivity of L-VOD to above-ground biomass in Africa , 2018, Biogeosciences.
[44] E. Wood,et al. Accelerating forest loss in Southeast Asian Massif in the 21st century: A case study in Nan Province, Thailand , 2018, Global change biology.
[45] A. Ziegler,et al. Highland cropland expansion and forest loss in Southeast Asia in the twenty-first century , 2018, Nature Geoscience.
[46] M. Disney,et al. Estimating urban above ground biomass with multi-scale LiDAR , 2018, Carbon Balance and Management.
[47] Weiliang Fan,et al. Estimating bamboo forest aboveground biomass using EnKF-assimilated MODIS LAI spatiotemporal data and machine learning algorithms , 2018, Agricultural and Forest Meteorology.
[48] Quy V. Khuc,et al. Drivers of deforestation and forest degradation in Vietnam: An exploratory analysis at the national level , 2018, Forest Policy and Economics.
[49] Arnaud Mialon,et al. Satellite passive microwaves reveal recent climate-induced carbon losses in African drylands , 2018, Nature Ecology & Evolution.
[50] G. Asner,et al. An above-ground biomass map of African savannahs and woodlands at 25 m resolution derived from ALOS PALSAR , 2018 .
[51] Yann Kerr,et al. Development and Assessment of the SMAP Enhanced Passive Soil Moisture Product. , 2018, Remote sensing of environment.
[52] J. Watts,et al. A global satellite environmental data record derived from AMSR-E and AMSR2 microwave Earth observations , 2017 .
[53] Dell,et al. Contrasting carbon cycle responses of the tropical continents to the 2015–2016 El Niño , 2017, Science.
[54] Emanuele Santi,et al. The potential of multifrequency SAR images for estimating forest biomass in Mediterranean areas , 2017 .
[55] Dara Entekhabi,et al. L-band vegetation optical depth and effective scattering albedo estimation from SMAP. , 2017 .
[56] A. Al Bitar,et al. Modelling the Passive Microwave Signature from Land Surfaces: A Review of Recent Results and Application to the L-Band SMOS SMAP Soil Moisture Retrieval Algorithms , 2017 .
[57] Martin Brandt,et al. Mapping gains and losses in woody vegetation across global tropical drylands , 2017, Global change biology.
[58] Arnaud Mialon,et al. SMOS-IC: An Alternative SMOS Soil Moisture and Vegetation Optical Depth Product , 2017, Remote. Sens..
[59] Arief Wijaya,et al. An integrated pan‐tropical biomass map using multiple reference datasets , 2016, Global change biology.
[60] Richard de Jeu,et al. Analyzing the Vegetation Parameterization in the TU-Wien ASCAT Soil Moisture Retrieval , 2016, IEEE Transactions on Geoscience and Remote Sensing.
[61] Yann Kerr,et al. Assessment of the SMAP Passive Soil Moisture Product , 2016, IEEE Transactions on Geoscience and Remote Sensing.
[62] Dara Entekhabi,et al. Vegetation optical depth and scattering albedo retrieval using time series of dual-polarized L-band radiometer observations , 2016 .
[63] K. Steppe,et al. Woody tissue photosynthesis in trees: salve on the wounds of drought? , 2015, The New phytologist.
[64] Y. Malhi,et al. Death from drought in tropical forests is triggered by hydraulics not carbon starvation , 2015, Nature.
[65] P. D’Odorico,et al. Accelerated deforestation driven by large-scale land acquisitions in Cambodia , 2015 .
[66] N. McDowell,et al. Larger trees suffer most during drought in forests worldwide , 2015, Nature Plants.
[67] Jordi Cristóbal,et al. Estimating above-ground biomass on mountain meadows and pastures through remote sensing , 2015, Int. J. Appl. Earth Obs. Geoinformation.
[68] Matthew F. McCabe,et al. Recent reversal in loss of global terrestrial biomass , 2015 .
[69] Julia P. G. Jones,et al. Spatial patterns of carbon, biodiversity, deforestation threat, and REDD+ projects in Indonesia , 2015, Conservation biology : the journal of the Society for Conservation Biology.
[70] Shi Qiu,et al. Estimating the Aboveground Dry Biomass of Grass by Assimilation of Retrieved LAI Into a Crop Growth Model , 2015, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[71] Mahendra Singh Nathawat,et al. A review of radar remote sensing for biomass estimation , 2015, International Journal of Environmental Science and Technology.
[72] Christopher O. Justice,et al. Cloud cover throughout the agricultural growing season: Impacts on passive optical earth observations , 2015 .
[73] A. Al Bitar,et al. Global-scale evaluation of two satellite-based passive microwave soil moisture datasets (SMOS and AMSR-E) with respect to Land Data Assimilation System estimates , 2014, Remote Sensing of Environment.
[74] J. Terborgh,et al. Markedly divergent estimates of Amazon forest carbon density from ground plots and satellites , 2014, Global ecology and biogeography : a journal of macroecology.
[75] Thuy Le Toan,et al. Vertical Structure of P-Band Temporal Decorrelation at the Paracou Forest: Results From TropiScat , 2014, IEEE Geoscience and Remote Sensing Letters.
[76] N. McDowell,et al. How do trees die? A test of the hydraulic failure and carbon starvation hypotheses , 2013, Plant, cell & environment.
[77] A. Baccini,et al. Improving pantropical forest carbon maps with airborne LiDAR sampling , 2013 .
[78] C. Justice,et al. High-Resolution Global Maps of 21st-Century Forest Cover Change , 2013, Science.
[79] Matthew O. Jones,et al. Satellite microwave detection of boreal forest recovery from the extreme 2004 wildfires in Alaska and Canada , 2013, Global change biology.
[80] Kenneth Grogan,et al. Exploring Patterns and Effects of Aerosol Quantity Flag Anomalies in MODIS Surface Reflectance Products in the Tropics , 2013, Remote. Sens..
[81] Yi Y. Liu,et al. Global vegetation biomass change (1988–2008) and attribution to environmental and human drivers , 2013 .
[82] Hanqin Tian,et al. Terrestrial carbon balance in tropical Asia: Contribution from cropland expansion and land management , 2013 .
[83] R. Nemani,et al. Persistent effects of a severe drought on Amazonian forest canopy , 2012, Proceedings of the National Academy of Sciences.
[84] C. Tucker,et al. Remote sensing of tropical ecosystems: Atmospheric correction and cloud masking matter , 2012 .
[85] Deborah Lawrence,et al. Committed carbon emissions, deforestation, and community land conversion from oil palm plantation expansion in West Kalimantan, Indonesia , 2012, Proceedings of the National Academy of Sciences.
[86] S. Goetz,et al. Estimated carbon dioxide emissions from tropical deforestation improved by carbon-density maps , 2012 .
[87] Arnaud Mialon,et al. The SMOS Soil Moisture Retrieval Algorithm , 2012, IEEE Transactions on Geoscience and Remote Sensing.
[88] Lars M. H. Ulander,et al. L- and P-band backscatter intensity for biomass retrieval in hemiboreal forest , 2011 .
[89] W. Salas,et al. Benchmark map of forest carbon stocks in tropical regions across three continents , 2011, Proceedings of the National Academy of Sciences.
[90] N. McDowell,et al. Mechanisms Linking Drought, Hydraulics, Carbon Metabolism, and Vegetation Mortality1[W] , 2011, Plant Physiology.
[91] Helen Amanda Fricker,et al. The ICESat-2 Laser Altimetry Mission , 2010, Proceedings of the IEEE.
[92] Ge Sun,et al. Model estimates of net primary productivity, evapotranspiration, and water use efficiency in the terrestrial ecosystems of the southern United States during 1895–2007 , 2010 .
[93] N. McDowell,et al. Mechanisms of plant survival and mortality during drought: why do some plants survive while others succumb to drought? , 2008, The New phytologist.
[94] R. Jeu,et al. Multisensor historical climatology of satellite‐derived global land surface moisture , 2008 .
[95] Yann Kerr,et al. SMOS: The Mission and the System , 2008, IEEE Transactions on Geoscience and Remote Sensing.
[96] W. Ju,et al. Combining remote sensing imagery and forest age inventory for biomass mapping. , 2007, Journal of environmental management.
[97] D. Nepstad,et al. Mortality of large trees and lianas following experimental drought in an Amazon forest. , 2007, Ecology.
[98] Sassan Saatchi,et al. Estimation of Forest Fuel Load From Radar Remote Sensing , 2007, IEEE Transactions on Geoscience and Remote Sensing.
[99] Y. Kerr,et al. L-band Microwave Emission of the Biosphere (L-MEB) Model: Description and calibration against experimental data sets over crop fields , 2007 .
[100] Thuy Le Toan,et al. Relating Radar Remote Sensing of Biomass to Modelling of Forest Carbon Budgets , 2004 .
[101] R. DeFries,et al. Detecting Long-term Global Forest Change Using Continuous Fields of Tree-Cover Maps from 8-km Advanced Very High Resolution Radiometer (AVHRR) Data for the Years 1982–99 , 2004, Ecosystems.
[102] Frédéric Achard,et al. Improved estimates of net carbon emissions from land cover change in the tropics for the 1990s , 2004 .
[103] Berrien Moore,et al. Regional carbon dynamics in monsoon Asia and its implications for the global carbon cycle , 2003 .
[104] J. Townshend,et al. Towards an operational MODIS continuous field of percent tree cover algorithm: examples using AVHRR and MODIS data , 2002 .
[105] F. Achard,et al. Determination of Deforestation Rates of the World's Humid Tropical Forests , 2002, Science.
[106] Guoqing Sun,et al. Radiometric slope correction for forest biomass estimation from SAR data in the Western Sayani Mountains, Siberia , 2002 .
[107] Richard A. Houghton,et al. The spatial distribution of forest biomass in the Brazilian Amazon: a comparison of estimates , 2001 .
[108] Jeffrey P. Walker,et al. A methodology for surface soil moisture and vegetation optical depth retrieval using the microwave polarization difference index , 2001, IEEE Trans. Geosci. Remote. Sens..
[109] Yann Kerr,et al. Two-Dimensional Microwave Interferometer Retrieval Capabilities over Land Surfaces (SMOS Mission) , 2000 .
[110] J. Townshend,et al. A new global 1‐km dataset of percentage tree cover derived from remote sensing , 2000 .
[111] Martti Hallikainen,et al. Retrieval of biomass in boreal forests from multitemporal ERS-1 and JERS-1 SAR images , 1999, IEEE Trans. Geosci. Remote. Sens..
[112] C. Tucker,et al. Increased plant growth in the northern high latitudes from 1981 to 1991 , 1997, Nature.
[113] N. Bruguier,et al. A simple algorithm to retrieve soil moisture and vegetation biomass using passive microwave measurements over crop fields , 1995 .
[114] Sandra Brown,et al. BIOMASS OF TROPICAL FORESTS OF SOUTH AND SOUTHEAST ASIA , 1991 .