Cataloged from PDF version of article.In this article we consider the representation of a finite-energy non-stationary random field with a finite number of samples. We pose the problem as an optimal sampling problem where we seek the optimal sampling interval under the mean-square error criterion, for a given number of samples. We investigate the optimum sampling rates and the resulting trade-offs between the number of samples and the representation error. In our numerical experiments, we consider a parametric non-stationary field model, the Gaussian–Schell model, and present sampling schemes for varying noise levels and for sources with varying numbers of degrees of freedom. We discuss the dependence of the optimum sampling interval...
This thesis studies MMSE estimation on the basis of quantized noisy observations. It presents nonas...
The problem of estimation of linear functionals which depend on the unknown values of a homogeneous ...
© 2019, International Association for Mathematical Geosciences.The task of optimal sampling for the ...
In this article we consider the representation of a finite-energy non-stationary random field with a...
We focus on the problem of representing a nonstationary finite-energy random field, with finitely ma...
Recently, it was shown that it is possible to develop exact sampling schemes for a large class of pa...
A sampling-based framework for finding the optimal representation of a finite energy optical field u...
summary:We study the limiting distribution of the maximum value of a stationary bivariate real rando...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Gaussian Markov random fields (GMRFs) are important modeling tools in statistics. They are often uti...
The generalization of the sampling theorem to multidimensional signals is considered, with or withou...
A unified approach to sampling theorems for (wide sense) stationary random processes rests upon Hilb...
This paper presents an algorithm for simulating Gaussian random fields with zero mean and non-stati...
A unified approach to sampling theorems for (wide sense) stationary random processes rests upon Hilb...
member, IEEE This paper addresses the problem of sampling non-bandlimited signals within the Finite ...
This thesis studies MMSE estimation on the basis of quantized noisy observations. It presents nonas...
The problem of estimation of linear functionals which depend on the unknown values of a homogeneous ...
© 2019, International Association for Mathematical Geosciences.The task of optimal sampling for the ...
In this article we consider the representation of a finite-energy non-stationary random field with a...
We focus on the problem of representing a nonstationary finite-energy random field, with finitely ma...
Recently, it was shown that it is possible to develop exact sampling schemes for a large class of pa...
A sampling-based framework for finding the optimal representation of a finite energy optical field u...
summary:We study the limiting distribution of the maximum value of a stationary bivariate real rando...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Gaussian Markov random fields (GMRFs) are important modeling tools in statistics. They are often uti...
The generalization of the sampling theorem to multidimensional signals is considered, with or withou...
A unified approach to sampling theorems for (wide sense) stationary random processes rests upon Hilb...
This paper presents an algorithm for simulating Gaussian random fields with zero mean and non-stati...
A unified approach to sampling theorems for (wide sense) stationary random processes rests upon Hilb...
member, IEEE This paper addresses the problem of sampling non-bandlimited signals within the Finite ...
This thesis studies MMSE estimation on the basis of quantized noisy observations. It presents nonas...
The problem of estimation of linear functionals which depend on the unknown values of a homogeneous ...
© 2019, International Association for Mathematical Geosciences.The task of optimal sampling for the ...