Timely monitoring of crop production using a remote sensing-based approach offers promise toward enhancing food security. Statistical models developed using satellite data typically employ a single vegetation index from a single sensor for yield estimation. With the increasing availability of satellite datasets, there is now an opportunity to investigate the potential of available vegetation indices from different sensors in estimating yields. The key objective of this study was to develop a best-performing satellite-based yield model for the Canadian Prairies for wheat, barley, and canola, trained using municipality-level data from 2009 to 2019. We tested the statistical performance of models built using (a) indices from different sensors ...
Remote sensing can be used for yield estimation prior to harvest and can replace or complement class...
Crop yield forecasting plays a vital role in coping with the challenges of the impacts of climate ch...
Regional crop yield prediction methods can be enhanced by the use of remote sensing based inputs to ...
The production of grain crops plays an important role in the economy of the Canadian Prairies and ea...
Remote sensing can be very useful tool for agriculture management. In this study, remote sensing met...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
Accurate and timely crop condition monitoring is crucial for food management and the economic develo...
Crop growth and yield monitoring are essential for food security and agricultural economic return pr...
Yield is one of the primary concerns for any farmer since it is a key to economic prosperity. Yield ...
Accurate and timely crop yield forecasts are critical for making informed agricultural policies and ...
Knowledge of the crop yield with sufficient lead time prior to harvest is crucial for both the farm ...
Vegetation indices sensed by satellite optical sensors are valuable tools for assessing vegetation c...
Forecasting of crop production is most important aspect of agricultural statistics system. Yield for...
Food and feed production must be increased or maintained in order to meet the demands of the earth’s...
Information provided by satellite data is becoming increasingly important in the field of agricultur...
Remote sensing can be used for yield estimation prior to harvest and can replace or complement class...
Crop yield forecasting plays a vital role in coping with the challenges of the impacts of climate ch...
Regional crop yield prediction methods can be enhanced by the use of remote sensing based inputs to ...
The production of grain crops plays an important role in the economy of the Canadian Prairies and ea...
Remote sensing can be very useful tool for agriculture management. In this study, remote sensing met...
Spatial information embedded in a crop model can improve yield prediction. Leaf area index (LAI) is ...
Accurate and timely crop condition monitoring is crucial for food management and the economic develo...
Crop growth and yield monitoring are essential for food security and agricultural economic return pr...
Yield is one of the primary concerns for any farmer since it is a key to economic prosperity. Yield ...
Accurate and timely crop yield forecasts are critical for making informed agricultural policies and ...
Knowledge of the crop yield with sufficient lead time prior to harvest is crucial for both the farm ...
Vegetation indices sensed by satellite optical sensors are valuable tools for assessing vegetation c...
Forecasting of crop production is most important aspect of agricultural statistics system. Yield for...
Food and feed production must be increased or maintained in order to meet the demands of the earth’s...
Information provided by satellite data is becoming increasingly important in the field of agricultur...
Remote sensing can be used for yield estimation prior to harvest and can replace or complement class...
Crop yield forecasting plays a vital role in coping with the challenges of the impacts of climate ch...
Regional crop yield prediction methods can be enhanced by the use of remote sensing based inputs to ...