The efficient mapping of environmental hazards requires the development of methods for the analysis of the spatial distributions sampled from environmental monitoring networks. We focus on the detection of the geometric (elliptic) anisotropy parameters of spatially distributed variables represented by means of random fields. The geostatistical estimation of anisotropy parameters often relies on empirical methods or maximum likelihood approaches that are impractical for large data sets. We present a non-parametric, computationally fast method for the identification of the anisotropy parameters of scalar random fields. The method uses sample based estimates of the spatial derivatives that are related through closed form expressions to the ani...
For modeling spatial processes, we propose rich classes of range anisotropic covariance structures t...
The Matérn correlation function provides great flexibility for modeling spatially correlated random ...
This work addresses the question of building useful and valid models of anisotropic variograms for s...
Summarization: Random fields are useful models of spatially variable quantities, such as those occur...
Summarization: Spatially referenced data often have autocovariance functions with elliptical isoleve...
Summarization: This paper addresses the estimation of geometric anisotropy parameters from scattered...
This paper addresses the estimation of geometric anisotropy parameters from scattered data in two di...
Spartan random fields (RF’s) were recently introduced as computationally fast and parametrically fru...
Large or very large spatial (and spatio-temporal) datasets have become common place in many environm...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
Summarization: Introduction -- 2. Classic geostatistics -- 3. Inference models -- 4. Clustered CHI ...
We develop a new methodology for estimating and testing the form of anisotropy of homogeneous spatia...
International audienceLarge or very large spatial (and spatio-temporal) datasets have become common ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
For modeling spatial processes, we propose rich classes of range anisotropic covariance structures t...
The Matérn correlation function provides great flexibility for modeling spatially correlated random ...
This work addresses the question of building useful and valid models of anisotropic variograms for s...
Summarization: Random fields are useful models of spatially variable quantities, such as those occur...
Summarization: Spatially referenced data often have autocovariance functions with elliptical isoleve...
Summarization: This paper addresses the estimation of geometric anisotropy parameters from scattered...
This paper addresses the estimation of geometric anisotropy parameters from scattered data in two di...
Spartan random fields (RF’s) were recently introduced as computationally fast and parametrically fru...
Large or very large spatial (and spatio-temporal) datasets have become common place in many environm...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
Summarization: Introduction -- 2. Classic geostatistics -- 3. Inference models -- 4. Clustered CHI ...
We develop a new methodology for estimating and testing the form of anisotropy of homogeneous spatia...
International audienceLarge or very large spatial (and spatio-temporal) datasets have become common ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
For modeling spatial processes, we propose rich classes of range anisotropic covariance structures t...
The Matérn correlation function provides great flexibility for modeling spatially correlated random ...
This work addresses the question of building useful and valid models of anisotropic variograms for s...