Mapping Spatial Thematic Accuracy Using Indicator Kriging
نویسندگان
چکیده
منابع مشابه
Estimation and Mapping of Misclassification Probabilities for Thematic Land Cover Maps
There is abundant evidence that thematic map accuracy may vary across a landscape in a manner that is only partially related to land cover type. Spatial variation in accuracy may be attributable to factors such as terrain, landscape complexity, and land use patterns. There may be serious consequences in the construction and application of thematic maps when the pattern and degree of spatial var...
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