For large areas, it is difficult to assess the spatial distribution and inter-annual variation of crop acreages through field surveys. Such information, however, is of great value for governments, land managers, planning authorities, commodity traders and environmental scientists. Time series of coarse resolution imagery offer the advantage of global coverage at low costs, and are therefore suitable for large-scale crop type mapping. Due to their coarse spatial resolution, however, the problem of mixed pixels has to be addressed. Traditional hard classification approaches cannot be applied because of sub-pixel heterogeneity. We evaluate neural networks as a modeling tool for sub-pixel crop acreage estimation. The proposed methodology is ba...
This current work is aimed at developing and testing a methodology which can be applied to low spati...
Long timeseries of Earth observation data for the characterization of agricultural crops across larg...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
For large areas, it is difficult to assess the spatial distribution and inter-annual variation of cr...
The current work aimed at testing a methodology which can be applied to low spatial resolution satel...
Abstract: For large areas, it is difficult to assess the spatial distribution and inter-annual varia...
Abstract: This study employs sub-pixel classification methods to estimate crop acreage using low re...
Abstract: The Moderate Resolution Imaging Spectroradiometer (MODIS) offers a unique combination of s...
The size and location of agricultural fields that are in active use and the type of use during the g...
The size and location of agricultural fields that are in active use and the type of use during the g...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
The aim of this paper is to map agricultural crops by classifying satellite image time series. Domai...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
This current work is aimed at developing and testing a methodology which can be applied to low spati...
Long timeseries of Earth observation data for the characterization of agricultural crops across larg...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...
For large areas, it is difficult to assess the spatial distribution and inter-annual variation of cr...
The current work aimed at testing a methodology which can be applied to low spatial resolution satel...
Abstract: For large areas, it is difficult to assess the spatial distribution and inter-annual varia...
Abstract: This study employs sub-pixel classification methods to estimate crop acreage using low re...
Abstract: The Moderate Resolution Imaging Spectroradiometer (MODIS) offers a unique combination of s...
The size and location of agricultural fields that are in active use and the type of use during the g...
The size and location of agricultural fields that are in active use and the type of use during the g...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
Most methods used for crop classification rely on the ground-reference data of the same year, which ...
In response to the need for generic remote sensing tools to support large-scale agricultural monitor...
The aim of this paper is to map agricultural crops by classifying satellite image time series. Domai...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
This current work is aimed at developing and testing a methodology which can be applied to low spati...
Long timeseries of Earth observation data for the characterization of agricultural crops across larg...
AbstractMODIS has been providing daily imagery for retrieving land surface properties with a spatial...