Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statistical features of uncertainty through variance inflation, and the compounding of duplicate information. Estimating the nature and degree of this spatial autocorrelation, which is usually positive and very strong, has been hindered by computational intensity associated with the massive number of pixels in realistically-sized remotely-sensed images, a situation that more recently has changed. Recent advances in spatial statistical estimation theory support the extraction of information and the distilling of knowledge from remotely-sensed images in a way that accounts for latent spatial autocorrelation. This paper summarizes an effective methodol...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
The purpose of the workshop was to invite statisticians, applied mathematicians, computer scientists...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
In several land use models statistical methods are being used to analyse spatial data. Land use driv...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
Virtually all remotely sensed data contain spatial autocorrelation, which impacts upon their statist...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
The purpose of the workshop was to invite statisticians, applied mathematicians, computer scientists...
Distinguishing the analysis of spatial data from classical analysis is only meaningful if the spati...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
In several land use models statistical methods are being used to analyse spatial data. Land use driv...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
Various modelling approaches exist for the simulation and exploration of land use change. Until rece...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...
International audienceSpatial information is pervaded by uncertainty. Indeed, geographical data is o...