Publication | Closed Access
Spatial structure, sampling design and scale in remotely-sensed imagery of a California savanna woodland
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Citations
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References
1993
Year
EngineeringLand UseForestryLand CoverTerrestrial SensingEarth ScienceSocial SciencesRemotely-sensed ImageryLand Surface ParametersSpatial AutocorrelationGeographyCalifornia Savanna WoodlandEarth Observation DataLand Cover MapDeforestationLinear RelationsRemote SensingForest InventorySpatial StructureSpatial Statistics
Abstract This article describes research related to sampling techniques for establishing linear relations between land surface parameters and remotely-sensed data. Predictive relations are estimated between percentage tree cover in a savanna environment and a normalized difference vegetation index (NDVI) derived from the Thematic Mapper sensor. Spatial autocorrelation in original measurements and regression residuals is examined using semi-variogram analysis at several spatial resolutions. Sampling schemes are then tested to examine the effects of autocorrelation on predictive linear models in cases of small sample sizes. Regression models between image and ground data are affected by the spatial resolution of analysis. Reducing the influence of spatial autocorrelation by enforcing minimum distances between samples may also improve empirical models which relate ground parameters to satellite data. Additional informationNotes on contributorsM. FRIEDL Currently at Department of Geography, Boston University, Boston, MA 02215, USA
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