Most methods used for crop classification rely on the ground-reference data of the same year, which leads to considerable financial and labor cost. In this study, we presented a method that can avoid the requirements of a large number of ground-reference data in the classification year. Firstly, we extracted the Normalized Difference Vegetation Index (NDVI) time series profiles of the dominant crops from MODIS data using the historical ground-reference data in multiple years (2006, 2007, 2009 and 2010). Artificial Antibody Network (ABNet) was then employed to build reference NDVI time series for each crop based on the historical NDVI profiles. Afterwards, images of Landsat and HJ were combined to obtain 30 m image time series with 15-day ac...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
PROBA-V is a new global vegetation monitoring satellite launched in the second quarter of 2013 that ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Timely and accurate mapping of winter crop planting areas in China is important for food security as...
With the recent launch of new satellites and the developments of spatiotemporal data fusion methods,...
Mapping rice cropping systems with optical imagery in multiple cropping regions is challenging due t...
With the availability of high frequent satellite data, crop phenology could be accurately mapped usi...
Mapping the spatial and temporal dynamics of cropland is an important prerequisite for regular crop ...
Detecting the situation of cropland in the semi-arid area, north of China is very important for agri...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
For large areas, it is difficult to assess the spatial distribution and inter-annual variation of cr...
Time series data capture crop growth dynamics and are some of the most effective data sources for cr...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
PROBA-V is a new global vegetation monitoring satellite launched in the second quarter of 2013 that ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Timely and accurate mapping of winter crop planting areas in China is important for food security as...
With the recent launch of new satellites and the developments of spatiotemporal data fusion methods,...
Mapping rice cropping systems with optical imagery in multiple cropping regions is challenging due t...
With the availability of high frequent satellite data, crop phenology could be accurately mapped usi...
Mapping the spatial and temporal dynamics of cropland is an important prerequisite for regular crop ...
Detecting the situation of cropland in the semi-arid area, north of China is very important for agri...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Crop identification in large irrigation districts is important for crop yield estimation, hydrologic...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
For large areas, it is difficult to assess the spatial distribution and inter-annual variation of cr...
Time series data capture crop growth dynamics and are some of the most effective data sources for cr...
Crop condition assessment in the early growing stage is essential for crop monitoring and crop yield...
Timely and efficient monitoring of crop phenology at a high spatial resolution are crucial for the p...
PROBA-V is a new global vegetation monitoring satellite launched in the second quarter of 2013 that ...