AbstractThe problem of fitting a nice curve or surface to scattered, possibly noisy, data arises in many applications in science and engineering. In this paper we solve the problem using a standard regularized least square framework in an approximation space spanned by the shifts and dilates of a single compactly supported function ϕ. We first provide an error analysis to our approach which, roughly speaking, states that the error between the exact (probably unknown) data function and the obtained fitting function is small whenever the scattered samples have a high sampling density and a low noise level. We then give a computational formulation in the univariate case when ϕ is a uniform B-spline and in the bivariate case when ϕ is the tenso...
A new multivariate approximation scheme to scattered data on arbitrary bounded domains in Rd is deve...
AbstractThe approximation of discontinuous multivariate functions from a set of scattered data point...
We present an efficient method to automatically compute a smooth approximation of large functional s...
AbstractThe problem of fitting a nice curve or surface to scattered, possibly noisy, data arises in ...
We consider large–scale scattered data problems where the information is given in form of nonuniform...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
In real world applications many signals contain singularities, like edges in images. Recent wavelet ...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
A new multivariate approximation scheme to scattered data on arbitrary bounded domains in Rd is deve...
AbstractThe approximation of discontinuous multivariate functions from a set of scattered data point...
We present an efficient method to automatically compute a smooth approximation of large functional s...
AbstractThe problem of fitting a nice curve or surface to scattered, possibly noisy, data arises in ...
We consider large–scale scattered data problems where the information is given in form of nonuniform...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
In real world applications many signals contain singularities, like edges in images. Recent wavelet ...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
For many applications, nonuniformly distributed functional data is given which lead to large–scale s...
A new multivariate approximation scheme to scattered data on arbitrary bounded domains in Rd is deve...
AbstractThe approximation of discontinuous multivariate functions from a set of scattered data point...
We present an efficient method to automatically compute a smooth approximation of large functional s...