There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation data. A suitable model for such data is a space-varying regression model, where the regression coefficients for the spatial locations are dependent. A second order intrinsic Gaussian Markov Random Field prior is used to specify the spatial covariance structure. Model parameters are estimated using the Expectation Maximisation (EM) algorithm, which allows for feasible computation times for relatively large data sets. Results are illustrated with simulated data sets and real vegetation data from the Sahel area in northern Africa. The results indicate a substantial gain in accuracy compared with methods based on independent ordinary least squares r...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
A method is proposed for simultaneously estimating the trend and random component of soil properties...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
In this thesis computationally intensive methods are used to estimate models and to make inference f...
A spatio-temporal model is constructed to interpolate yearly pre-cipitation data from 1982 to 1996 o...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
Doctor of PhilosophyDepartment of StatisticsJuan DuIt is common to assume the spatial or spatio-temp...
A new method based on distances for modeling continuous random data in Gaussian random fields is pre...
The use of satellite measurements in climate studies promises many new scientific insights if those ...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
A method is proposed for simultaneously estimating the trend and random component of soil properties...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
There is a need for efficient methods for estimating trends in spatio-temporal Earth Observation dat...
In this thesis computationally intensive methods are used to estimate models and to make inference f...
A spatio-temporal model is constructed to interpolate yearly pre-cipitation data from 1982 to 1996 o...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
Doctor of PhilosophyDepartment of StatisticsJuan DuIt is common to assume the spatial or spatio-temp...
A new method based on distances for modeling continuous random data in Gaussian random fields is pre...
The use of satellite measurements in climate studies promises many new scientific insights if those ...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
In this article, we propose an approach based on Gaussian Processes (GP) for large scale land cover ...
A method is proposed for simultaneously estimating the trend and random component of soil properties...
The random field model has been applied to model spatial heterogeneity for spatial data in many appl...