The paper is an engineering exposition of the Stochastic Interpolation Framework, a novel mathematical approach to data regularization, which recovers a function from input data that is a representation of this data. The framework is an area-based method that comprises a two-step procedure: de-convolution and convolution, involving row-stochastic matrices. Varying the extent of convolution with respect to de-convolution in the framework obtains a gamut of functional recovery ranging from interpolation to approximation, to peak sharpening. Construction of the row stochastic matrices is achieved by means of a mollifier, a positive function which serves as the generator of the row space of these matrices. The properties of the recovered functi...
The analysis presented provides a quantitative measure of the reconstruction or interpolation perfor...
We present a novel stochastic framework for non-blind deconvolution based on point samples obtained ...
A set of C++ classes have been written for finding an interpolated scalar value at any point on a re...
Based on a probabilistic method, the data regularization framework known as stochastic interpolation...
The stochastic interpolation (SI) framework of function recovery from input data comprises a de-conv...
We illustrate the use of a novel family of stochastic methods for function recovery and illustrate t...
The stochastic Bernstein method (not to be confused with the Bernstein polynomials) is a novel and s...
The empirical interpolation method is an interpolation scheme with problem dependent basis functions...
This paper considers the analysis of partial differential equations (PDE) containing multiple random...
As efficient separation of variables plays a central role in model reduction for nonlinear and nonaf...
Description of the work and motivation A ubiquitous problem in signal processing is to obtain data s...
In this series of papers, we present a new approach to the problems of Fourier synthesis in finite d...
Radial Basis Functions (RBF) interpolation theory is briefly introduced at the “application level” i...
The design of a reliable, high-quality method for finding the boundary contour of a two-dimensional ...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
The analysis presented provides a quantitative measure of the reconstruction or interpolation perfor...
We present a novel stochastic framework for non-blind deconvolution based on point samples obtained ...
A set of C++ classes have been written for finding an interpolated scalar value at any point on a re...
Based on a probabilistic method, the data regularization framework known as stochastic interpolation...
The stochastic interpolation (SI) framework of function recovery from input data comprises a de-conv...
We illustrate the use of a novel family of stochastic methods for function recovery and illustrate t...
The stochastic Bernstein method (not to be confused with the Bernstein polynomials) is a novel and s...
The empirical interpolation method is an interpolation scheme with problem dependent basis functions...
This paper considers the analysis of partial differential equations (PDE) containing multiple random...
As efficient separation of variables plays a central role in model reduction for nonlinear and nonaf...
Description of the work and motivation A ubiquitous problem in signal processing is to obtain data s...
In this series of papers, we present a new approach to the problems of Fourier synthesis in finite d...
Radial Basis Functions (RBF) interpolation theory is briefly introduced at the “application level” i...
The design of a reliable, high-quality method for finding the boundary contour of a two-dimensional ...
In this study, the problem of feature extraction by scale-space methods is addressed. The modeling o...
The analysis presented provides a quantitative measure of the reconstruction or interpolation perfor...
We present a novel stochastic framework for non-blind deconvolution based on point samples obtained ...
A set of C++ classes have been written for finding an interpolated scalar value at any point on a re...