Abstract: Soil moisture is a vital parameter in various land surface processes, and microwave remote sensing is widely used to estimate regional soil moisture. However, the application of the retrieved soil moisture data is restricted by its coarse spatial resolution. To overcome this weakness, many methods were proposed to downscale microwave soil moisture data. The traditional method is the microwave-optical/IR synergistic approach, in which land surface temperature (LST), vegetation index and surface albedo are key parameters. However, due to the uncertainty in absolute LST estimation, this approach is partly dependent on the accuracy of LST estimation. To eliminate the impacts of LST estimation, an improved downscaling method is propose...
In the past decade, a variety of algorithms have been introduced to downscale passive microwave soil...
Soil moisture retrieved from satellite microwave remote sensing normally has spatial resolution on t...
The observation could be used to reduce the model uncertainties with data assimilation. If the obser...
Soil moisture is a vital parameter in various land surface processes, and microwave remote sensing i...
Satellite remote sensing technology has been widely used to estimate surface soil moisture. Numerous...
Soil moisture impacts exchanges of water, energy and carbon fluxes between the land surface and the ...
Soil moisture (SM) applications in terrestrial hydrology require higher spatial resolution soil mois...
Recent advances in L-band passive microwave remote sensing provide an unprecedented opportunity to m...
This paper develops two alternative approaches for downscaling passive microwave-derived soil moistu...
Microwave remote sensing has been largely applied to retrieve soil moisture (SM) from active and pas...
A method to retrieve soil moisture at high spatial resolution is presented in this paper. The method...
Soil moisture, especially surface soil moisture (SSM), plays an important role in the development of...
Passive microwave remotely sensed soil moisture products, such as Advanced Microwave Scanning Radiom...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Since soil moisture is a key variable in interactions between land surface and atmosphere it is impo...
In the past decade, a variety of algorithms have been introduced to downscale passive microwave soil...
Soil moisture retrieved from satellite microwave remote sensing normally has spatial resolution on t...
The observation could be used to reduce the model uncertainties with data assimilation. If the obser...
Soil moisture is a vital parameter in various land surface processes, and microwave remote sensing i...
Satellite remote sensing technology has been widely used to estimate surface soil moisture. Numerous...
Soil moisture impacts exchanges of water, energy and carbon fluxes between the land surface and the ...
Soil moisture (SM) applications in terrestrial hydrology require higher spatial resolution soil mois...
Recent advances in L-band passive microwave remote sensing provide an unprecedented opportunity to m...
This paper develops two alternative approaches for downscaling passive microwave-derived soil moistu...
Microwave remote sensing has been largely applied to retrieve soil moisture (SM) from active and pas...
A method to retrieve soil moisture at high spatial resolution is presented in this paper. The method...
Soil moisture, especially surface soil moisture (SSM), plays an important role in the development of...
Passive microwave remotely sensed soil moisture products, such as Advanced Microwave Scanning Radiom...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Since soil moisture is a key variable in interactions between land surface and atmosphere it is impo...
In the past decade, a variety of algorithms have been introduced to downscale passive microwave soil...
Soil moisture retrieved from satellite microwave remote sensing normally has spatial resolution on t...
The observation could be used to reduce the model uncertainties with data assimilation. If the obser...