Accurate classification and mapping of crops is essential for supporting sustainable land management. Such maps can be created based on satellite remote sensing; however, the selection of input data and optimal classifier algorithm still needs to be addressed especially for areas where field data is scarce. We exploited the intra-annual variation of temporal signatures of remotely sensed observations and used prior knowledge of crop calendars for the development of a two-step processing chain for crop classification. First, Landsat-based time-series metrics capturing within-season phenological variation were preprocessed and analyzed using Google Earth Engine cloud computing platform. The developmental stage of each crop was modeled by fitt...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Vegetation monitoring and mapping based on multi-temporal imagery has recently received much attenti...
In this article, we propose a deep learning-based algorithm for the classification of crop types fro...
We investigated the use of phenological information extracted from satellite imagery combined with c...
Monitoring cropland phenology from optical satellite data remains a challenging task due to the infl...
International audienceTimely and efficient land-cover mapping is of high interest, especially in agr...
Geo-parcel based crop identification plays an important role in precision agriculture. It meets the ...
International audienceCrop supply and management is a global issue, particularly in the context of g...
Abstract The downside risk of crop production affects the entire supply chain of th...
Accurate acquisition of spatial and temporal distribution information for cropping systems is import...
Abstract Efficient, more accurate reporting of maize (Zea mays L.) phenology, crop condition, and pr...
Currently, remote sensing crop identification is mostly based on all available images acquired throu...
Mapping and monitoring the distribution of croplands and crop types support policymakers and interna...
Timely and efficient land-cover mapping is of high interest, especially in agricultural landscapes. ...
For the derivation of crop maps a method has been developed with which time series crop information ...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Vegetation monitoring and mapping based on multi-temporal imagery has recently received much attenti...
In this article, we propose a deep learning-based algorithm for the classification of crop types fro...
We investigated the use of phenological information extracted from satellite imagery combined with c...
Monitoring cropland phenology from optical satellite data remains a challenging task due to the infl...
International audienceTimely and efficient land-cover mapping is of high interest, especially in agr...
Geo-parcel based crop identification plays an important role in precision agriculture. It meets the ...
International audienceCrop supply and management is a global issue, particularly in the context of g...
Abstract The downside risk of crop production affects the entire supply chain of th...
Accurate acquisition of spatial and temporal distribution information for cropping systems is import...
Abstract Efficient, more accurate reporting of maize (Zea mays L.) phenology, crop condition, and pr...
Currently, remote sensing crop identification is mostly based on all available images acquired throu...
Mapping and monitoring the distribution of croplands and crop types support policymakers and interna...
Timely and efficient land-cover mapping is of high interest, especially in agricultural landscapes. ...
For the derivation of crop maps a method has been developed with which time series crop information ...
Near-surface cameras, such as those in the PhenoCam network, are a common source of ground truth dat...
Vegetation monitoring and mapping based on multi-temporal imagery has recently received much attenti...
In this article, we propose a deep learning-based algorithm for the classification of crop types fro...