Abstract. The term precision agriculture refers to the application of state-of-the-art GPS technology in connection with small-scale, sensor-based treatment of the crop. This data-driven approach to agriculture poses a number of data mining problems. One of those is also an obviously important task in agriculture: yield prediction. Given a precise, geographically annotated data set for a certain field, can a season’s yield be predicted? Numerous approaches have been proposed to solving this problem. In the past, classical regression models for non-spatial data have been used, like regression trees, neural networks and support vector machines. However, in a cross-validation learning approach, issues with the assumption of statistical indepen...
The goal of this research was to develop spatial regression methods to economically evaluate on-farm...
Farm terrain attributes influence soil properties and hence are important determinants of crop yield...
This paper shows that spatial panel data models can be successfully applied to an econometric analys...
Abstract. Precision Agriculture applies state-of-the-art GPS technology in con-nection with site-spe...
Abstract. Precision Agriculture applies state-of-the-art GPS technology in con-nection with site-spe...
Precision agricultural technology promises to move crop production closer to a manufacturing paradig...
ABSTRACT Advances in computing and data storage have made it possible to access a tremendous amoun...
Analysis methods for field-scale precision agriculture datasets are being developed by adapting stat...
Spatial variability in soil, crop, and topographic features, combined with temporal variability betw...
High-resolution yield maps are an essential tool in modern agriculture. Using spatial interpolation,...
ABSTRACT Precision agriculture has grown along with advances in farming, engineering, and computing....
The goal of this research was to adapt spatial regression methods to on-farm trials in a farm manage...
Spatial variability in soil, crop, and topographic features, combined with temporal variability in w...
Precision agriculture manages within-field spatial variability by applying suitable inputs at the ap...
Abstract. The effects of seasonal as well as spatial variability in yield maps for precision farming...
The goal of this research was to develop spatial regression methods to economically evaluate on-farm...
Farm terrain attributes influence soil properties and hence are important determinants of crop yield...
This paper shows that spatial panel data models can be successfully applied to an econometric analys...
Abstract. Precision Agriculture applies state-of-the-art GPS technology in con-nection with site-spe...
Abstract. Precision Agriculture applies state-of-the-art GPS technology in con-nection with site-spe...
Precision agricultural technology promises to move crop production closer to a manufacturing paradig...
ABSTRACT Advances in computing and data storage have made it possible to access a tremendous amoun...
Analysis methods for field-scale precision agriculture datasets are being developed by adapting stat...
Spatial variability in soil, crop, and topographic features, combined with temporal variability betw...
High-resolution yield maps are an essential tool in modern agriculture. Using spatial interpolation,...
ABSTRACT Precision agriculture has grown along with advances in farming, engineering, and computing....
The goal of this research was to adapt spatial regression methods to on-farm trials in a farm manage...
Spatial variability in soil, crop, and topographic features, combined with temporal variability in w...
Precision agriculture manages within-field spatial variability by applying suitable inputs at the ap...
Abstract. The effects of seasonal as well as spatial variability in yield maps for precision farming...
The goal of this research was to develop spatial regression methods to economically evaluate on-farm...
Farm terrain attributes influence soil properties and hence are important determinants of crop yield...
This paper shows that spatial panel data models can be successfully applied to an econometric analys...