AbstractArbitrary square-integrable (normalized) functions can be expanded exactly in terms of the Gaussian basis g(t;A) where A∈C. Smaller subsets of this highly overcomplete basis can be found, which are also overcomplete, e.g., the von Neumann lattice g(t;Amn) where Amn are on a lattice in the complex plane. Approximate representations of signals, using a truncated von Neumann lattice of only a few Gaussians, are considered. The error is quantified using various p-norms as accuracy measures, which reflect different practical needs. Optimization techniques are used to find optimal coefficients and to further reduce the size of the basis, whilst still preserving a good degree of accuracy. Examples are presented
We study the approximation of expectations E(f(X)) for Gaussian random elements X with values in a s...
Topics associated with the representation of objects from a separable Hilbert space in terms of an a...
Function approximation in Hilbert spaces is a well studied problem but the automatic selection of t...
AbstractArbitrary square-integrable (normalized) functions can be expanded exactly in terms of the G...
We propose a best basis algorithm for signal enhancement in white Gaussian noise. The best basis sea...
In this work, we design a set of complete orthonormal optimal basis functions for signals defined on...
In this work we discuss the problem of selecting suitable approximators from families of parameteriz...
In this work we discuss the problem of selecting suitable approximators from families of parameteriz...
The Gaussian kernel plays a central role in machine learning, uncertainty quantification and scatter...
Abstract—Maximum (or `∞) norm minimization subject to an underdetermined system of linear equations ...
AbstractWe study approximation of linear functionals on separable Banach spaces equipped with a Gaus...
Abstract. We give several properties of the reproducing kernel Hilbert space induced by the Gaussian...
This paper is devoted to the study of approximation of Gaussian functions bytheir partial Fourier su...
Abstract:- Most signal processing systems are based on discrete-time signals although the origin of ...
Increase in dimensionality of the signal space for a fixed bandwidth leads to exponential growth in ...
We study the approximation of expectations E(f(X)) for Gaussian random elements X with values in a s...
Topics associated with the representation of objects from a separable Hilbert space in terms of an a...
Function approximation in Hilbert spaces is a well studied problem but the automatic selection of t...
AbstractArbitrary square-integrable (normalized) functions can be expanded exactly in terms of the G...
We propose a best basis algorithm for signal enhancement in white Gaussian noise. The best basis sea...
In this work, we design a set of complete orthonormal optimal basis functions for signals defined on...
In this work we discuss the problem of selecting suitable approximators from families of parameteriz...
In this work we discuss the problem of selecting suitable approximators from families of parameteriz...
The Gaussian kernel plays a central role in machine learning, uncertainty quantification and scatter...
Abstract—Maximum (or `∞) norm minimization subject to an underdetermined system of linear equations ...
AbstractWe study approximation of linear functionals on separable Banach spaces equipped with a Gaus...
Abstract. We give several properties of the reproducing kernel Hilbert space induced by the Gaussian...
This paper is devoted to the study of approximation of Gaussian functions bytheir partial Fourier su...
Abstract:- Most signal processing systems are based on discrete-time signals although the origin of ...
Increase in dimensionality of the signal space for a fixed bandwidth leads to exponential growth in ...
We study the approximation of expectations E(f(X)) for Gaussian random elements X with values in a s...
Topics associated with the representation of objects from a separable Hilbert space in terms of an a...
Function approximation in Hilbert spaces is a well studied problem but the automatic selection of t...