about
A contemporary decennial examination of changing agricultural field sizes using Landsat time series dataCarbon sequestration potential of second-growth forest regeneration in the Latin American tropicsThe nexus between forest fragmentation in Africa and Ebola virus disease outbreakseFarm: A Tool for Better Observing Agricultural Land SystemsOpinion: Big data has big potential for applications to climate change adaptationDownscaling land-use data to provide global 30″ estimates of five land-use classes.Land management: data availability and process understanding for global change studies.Unsustainable development pathways caused by tropical deforestation.State-of-the-art practices in farmland biodiversity monitoring for North America and Europe.Future urban land expansion and implications for global croplands.A global dataset of crowdsourced land cover and land use reference data.Nature-based agricultural solutions: Scaling perennial grains across Africa.A Synergy Cropland of China by Fusing Multiple Existing Maps and Statistics.Combining global land cover datasets to quantify agricultural expansion into forests in Latin America: Limitations and challenges.A global reference database of crowdsourced cropland data collected using the Geo-Wiki platform.A large-area, spatially continuous assessment of land cover map error and its impact on downstream analyses.The scaling structure of the global road network.Future global productivity will be affected by plant trait response to climate.The phosphorus cost of agricultural intensification in the tropics.Farming and the geography of nutrient production for human use: a transdisciplinary analysis.Spatial distribution of arable and abandoned land across former Soviet Union countries.Biodiversity at risk under future cropland expansion and intensificationHow to spend a dwindling greenhouse gas budgetA spatially explicit representation of conservation agriculture for application in global change studiesCrop pests and predators exhibit inconsistent responses to surrounding landscape compositionUncertainties of potentials and recent changes in global yields of major crops resulting from census- and satellite-based yield datasets at multiple resolutionsRemote sensing technology and land use analysis in food security assessmentIntegrating global land cover datasets for deriving user-specific mapsSpatial Accuracy Assessment and Integration of Global Land Cover DatasetsThe potential of satellite-observed crop phenology to enhance yield gap assessments in smallholder landscapesAccelerated deforestation driven by large-scale land acquisitions in CambodiaCurrent challenges of implementing anthropogenic land-use and land-cover change in models contributing to climate change assessmentsMonitoring cropland changes along the Nile River in Egypt over past three decades (1984–2015) using remote sensingAnthropogenic land use estimates for the Holocene – HYDE 3.2A new research paradigm for global land cover mappingImproving global land cover characterization through data fusionAdapting to climate change in the mixed crop and livestock farming systems in sub-Saharan AfricaDramatic cropland expansion in Myanmar following political reforms threatens biodiversityRepurposing a deep learning network to filter and classify volunteered photographs for land cover and land use characterizationFusion of Sentinel-1A and Sentinel-2A data for land cover mapping: a case study in the lower Magdalena region, Colombia
P2860
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P2860
description
2015 nî lūn-bûn
@nan
2015年の論文
@ja
2015年論文
@yue
2015年論文
@zh-hant
2015年論文
@zh-hk
2015年論文
@zh-mo
2015年論文
@zh-tw
2015年论文
@wuu
2015年论文
@zh
2015年论文
@zh-cn
name
Mapping global cropland and field size.
@en
type
label
Mapping global cropland and field size.
@en
prefLabel
Mapping global cropland and field size.
@en
P2093
P50
P356
P1476
Mapping global cropland and field size.
@en
P2093
Adeaga Olusegun
Adriana Gomez
Alex Tiangwa
Aline Mosnier
Andre Nonguierma
Andriy Bun
Antonia Dunwoody
Chris Justice
Christelle Vancutsem
Christian Schill
P304
P356
10.1111/GCB.12838
P4510
P50
P577
2015-01-16T00:00:00Z