Information on the spatial distribution of yields can be obtained over a large area by using remote sensing (RS) data. Combining Synthetic Aperture Radar (SAR), being sensitive to above ground biomass and soil moisture in all weather conditions, and optical data can improve the usability of RS data and provide a basis for pixel-based crop yield estimation (YE). In this study, an Upscaled Convolutional Gated Recurrent Unit model incorporated an attention mechanism (UpSc-AConvGRU model) was proposed to improve the estimation accuracy of the winter wheat growth parameter, Leaf Area Index (LAI). Gap filling the time series of optical data was done with backscatter coefficients, local incidence angles and polarimetric decomposition information f...
Although optical remote sensing can capture the Earth's environment with visible and infrared...
peer reviewedHigh-frequency Earth observation (EO) data have been shown to be effective in identifyi...
Deep learning has emerged as a potential tool for crop yield prediction, allowing the model to autom...
Information on the spatial distribution of yields can be obtained over a large area by using remote ...
Information on the spatial distribution of yields can be obtained over a large area by using remote ...
Regions with excessive cloud cover lead to limited feasibility of applying optical images to monitor...
Remote sensing data are considered as one of the primary data sources for precise agriculture. Sever...
Timely and accurate estimation of winter wheat yield at a regional scale is crucial for national foo...
Crop yield estimation and prediction constitutes a key issue in agricultural management, particularl...
Crop biophysical parameters, such as Leaf Area Index (LAI) and biomass, are essential for estimating...
Satellite remote sensing offers a cost-effective means of generating long-term hindcasts of yield th...
The timely and accurate acquisition of winter wheat acreage is crucial for food security. This study...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
International audienceThe aim of this study is to estimate the capabilities of forecasting the yield...
Green leaf area index (LAI) characterizes both the structure and the photosynthetic capacity of a cr...
Although optical remote sensing can capture the Earth's environment with visible and infrared...
peer reviewedHigh-frequency Earth observation (EO) data have been shown to be effective in identifyi...
Deep learning has emerged as a potential tool for crop yield prediction, allowing the model to autom...
Information on the spatial distribution of yields can be obtained over a large area by using remote ...
Information on the spatial distribution of yields can be obtained over a large area by using remote ...
Regions with excessive cloud cover lead to limited feasibility of applying optical images to monitor...
Remote sensing data are considered as one of the primary data sources for precise agriculture. Sever...
Timely and accurate estimation of winter wheat yield at a regional scale is crucial for national foo...
Crop yield estimation and prediction constitutes a key issue in agricultural management, particularl...
Crop biophysical parameters, such as Leaf Area Index (LAI) and biomass, are essential for estimating...
Satellite remote sensing offers a cost-effective means of generating long-term hindcasts of yield th...
The timely and accurate acquisition of winter wheat acreage is crucial for food security. This study...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
International audienceThe aim of this study is to estimate the capabilities of forecasting the yield...
Green leaf area index (LAI) characterizes both the structure and the photosynthetic capacity of a cr...
Although optical remote sensing can capture the Earth's environment with visible and infrared...
peer reviewedHigh-frequency Earth observation (EO) data have been shown to be effective in identifyi...
Deep learning has emerged as a potential tool for crop yield prediction, allowing the model to autom...