The effect of errors in ground truth on the estimated thematic accuracy of a classifier is considered. A relationship is derived between the true accuracy of a classifier relative to ground truth without errors, the actual accuracy of the ground truth used, and the measured accuracy of the classifier as a function of the number of classes. We show that if the accuracy of the ground truth is known or can be estimated, the true accuracy of a classifier can be estimated from the measured accuracy. In a series of simulations our method is shown to produce unbiased estimates of the true accuracy of the classifier with an uncertainty that depends on the number of samples and the accuracy of the ground truth. A method for determining the relative ...
The accuracy of a binarization algorithm is often calculated relative to a ground truth image. Excep...
Classification accuracy statements derived from remote sensing are typically global measures. These ...
The comparison of classification accuracy statements has generally been based upon tests of differen...
International audienceThe use of ground truth (GT) data in the learning and/or assessment of classif...
Methods of assessing Landsat classification accuracy are necessary in order for any classification t...
<p>The validation producer’s accuracy measures for all classes in all classifications. For the binar...
The usual formulas for gauging the quality of a classification method assume that we know the ground...
International audienceThe existence of a few unreliable ground truth (GT) data sets which are often ...
Evaluating the accuracy of allocation to classes in monothetic hierarchical soil classification syst...
The ground data used as a reference in the validation of land cover change products are often not an...
Methods of assessing Landsat classification accuracy are necessary in order for any classification t...
The use of remotely sensed imagery to generate land cover models is common today. Validation of thes...
The probability of error or, alternatively, the probability of correct classification (PCC) is an im...
<p>Each gray line shows the accuracy difference when one subject’s deceptive data is used as test, a...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
The accuracy of a binarization algorithm is often calculated relative to a ground truth image. Excep...
Classification accuracy statements derived from remote sensing are typically global measures. These ...
The comparison of classification accuracy statements has generally been based upon tests of differen...
International audienceThe use of ground truth (GT) data in the learning and/or assessment of classif...
Methods of assessing Landsat classification accuracy are necessary in order for any classification t...
<p>The validation producer’s accuracy measures for all classes in all classifications. For the binar...
The usual formulas for gauging the quality of a classification method assume that we know the ground...
International audienceThe existence of a few unreliable ground truth (GT) data sets which are often ...
Evaluating the accuracy of allocation to classes in monothetic hierarchical soil classification syst...
The ground data used as a reference in the validation of land cover change products are often not an...
Methods of assessing Landsat classification accuracy are necessary in order for any classification t...
The use of remotely sensed imagery to generate land cover models is common today. Validation of thes...
The probability of error or, alternatively, the probability of correct classification (PCC) is an im...
<p>Each gray line shows the accuracy difference when one subject’s deceptive data is used as test, a...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
The accuracy of a binarization algorithm is often calculated relative to a ground truth image. Excep...
Classification accuracy statements derived from remote sensing are typically global measures. These ...
The comparison of classification accuracy statements has generally been based upon tests of differen...