The concept of spatial scale is fundamental to geography, as are the problems of integrating data obtained at different scales. The availability of GIS has provided an appropriate environment to re-scale data prior to subsequent integration, but few tools with which to implement the re-scaling. This sparsity of appropriate tools arises primarily because the nature of the spatial variation of interest is often poorly understood and, specifically, the patterns of spatial dependence and error are unknown. Spatial dependence can be represented and modelled using geostatistical approaches providing a basis for the subsequent re-scaling of spatial data (e.g., via spatial interpolation). Geostatistical techniques can also be used to model the effe...
Ecological studies are based on characteristics of groups of individuals, which are common in variou...
Geographical phenomena fall into two categories: scaleful phenomena and scale-free phenomena. The fo...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
The concept of spatial scale is fundamental to geography, as are the problems of integrating data ob...
Scale has long been a fundamental concept in geography. Its importance is emphasised in geographical...
The properties of geographical phenomena vary with changes in the scale of measurement. The informat...
This paper is based on the assumption that there may be scale effects at all levels of areal data an...
Information on the scale or frequency of spatial variation in properties such as land-form is of val...
Given the drawbacks for using geo-political areas in mapping outcomes unrelated to geo-politics, a c...
In this book we cover a wide range of topics that currently are available only as a material includ...
ABSTRACT: In geostatistical studies, spatial dependence can generally be described by means of the s...
The comparison of spatial patterns is a fundamental task in geography and quantitative spatial model...
Spatial and spatio-temporal data are not new. They have always been here. However, until fairly rece...
‘Spatial variability’ and ‘spatial relationships’ are key terms for sensing, modelling and managing ...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
Ecological studies are based on characteristics of groups of individuals, which are common in variou...
Geographical phenomena fall into two categories: scaleful phenomena and scale-free phenomena. The fo...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...
The concept of spatial scale is fundamental to geography, as are the problems of integrating data ob...
Scale has long been a fundamental concept in geography. Its importance is emphasised in geographical...
The properties of geographical phenomena vary with changes in the scale of measurement. The informat...
This paper is based on the assumption that there may be scale effects at all levels of areal data an...
Information on the scale or frequency of spatial variation in properties such as land-form is of val...
Given the drawbacks for using geo-political areas in mapping outcomes unrelated to geo-politics, a c...
In this book we cover a wide range of topics that currently are available only as a material includ...
ABSTRACT: In geostatistical studies, spatial dependence can generally be described by means of the s...
The comparison of spatial patterns is a fundamental task in geography and quantitative spatial model...
Spatial and spatio-temporal data are not new. They have always been here. However, until fairly rece...
‘Spatial variability’ and ‘spatial relationships’ are key terms for sensing, modelling and managing ...
Spatial clustering plays a key role in exploratory geographical data analysis. It is important for i...
Ecological studies are based on characteristics of groups of individuals, which are common in variou...
Geographical phenomena fall into two categories: scaleful phenomena and scale-free phenomena. The fo...
In geostatistics, spatial autocorrelation is utilized to estimate optimally local values from data s...