Variability in per cell classification accuracy is predominantly modelled with land-cover class as the explanatory variable, i.e. with users' accuracies from the error matrix. Logistic regression models were developed to include other explanatory variables: heterogeneity in the 3x3 window around a cell, the size of the patch and the complexity of the landscape in which a cell is located. It was found that per cell, the probability of correct classification was significantly (alpha = 0.05) higher for cells with a less heterogeneous neighbourhood, for cells part of larger patches and for cells in regions with a less heterogeneous landscape. To validate the models, a leave-one-out procedure was applied in which the absolute difference between ...
Researchers generally assume spatial homogeneity when assessing the factors that influence farmers t...
International audienceCrops are allocated to their fields by growers according to rotational princip...
Traditional benchmarking implicitly assumes that decision making units operate in isolation from the...
Variability in per cell classification accuracy is predominantly modelled with land-cover class as t...
allocation algorithms Calibration and validation of the Land Use Scanner allocation algorithms The L...
The ground truth data sets required to train supervised classifiers are usually collected as to maxi...
Accounting for field variation patterns plays a crucial role in interpreting phenotype data and, thu...
International audienceThis work aimed to evaluate whether different types of landscape structures (u...
International audienceCrop models are useful tools because they can help understand many complex pro...
Much effort has been spent on examining the spatial variation of classification accuracy and associa...
Classification accuracy statements derived from remote sensing are typically global measures. These ...
It is increasingly recognized that classification accuracy should be characterized locally at the le...
In this paper, extensions of the classification tree algorithm and analysis for spatial data are pro...
The relationship between plant diversity and topographic variability in agricultural landscapes was ...
Feasible, fast and reliable methods of mapping within-field variation are required for precision agr...
Researchers generally assume spatial homogeneity when assessing the factors that influence farmers t...
International audienceCrops are allocated to their fields by growers according to rotational princip...
Traditional benchmarking implicitly assumes that decision making units operate in isolation from the...
Variability in per cell classification accuracy is predominantly modelled with land-cover class as t...
allocation algorithms Calibration and validation of the Land Use Scanner allocation algorithms The L...
The ground truth data sets required to train supervised classifiers are usually collected as to maxi...
Accounting for field variation patterns plays a crucial role in interpreting phenotype data and, thu...
International audienceThis work aimed to evaluate whether different types of landscape structures (u...
International audienceCrop models are useful tools because they can help understand many complex pro...
Much effort has been spent on examining the spatial variation of classification accuracy and associa...
Classification accuracy statements derived from remote sensing are typically global measures. These ...
It is increasingly recognized that classification accuracy should be characterized locally at the le...
In this paper, extensions of the classification tree algorithm and analysis for spatial data are pro...
The relationship between plant diversity and topographic variability in agricultural landscapes was ...
Feasible, fast and reliable methods of mapping within-field variation are required for precision agr...
Researchers generally assume spatial homogeneity when assessing the factors that influence farmers t...
International audienceCrops are allocated to their fields by growers according to rotational princip...
Traditional benchmarking implicitly assumes that decision making units operate in isolation from the...