An important problem in applications is the approximation of a function $f$ from a finite set of randomly scattered data $f(x_j)$. A common and powerful approach is to construct a trigonometric least squares approximation based on the set of exponentials $\{e^{2\pi i kx}\}$. This leads to fast numerical algorithms, but suffers from disturbing boundary effects due to the underlying periodicity assumption on the data, an assumption that is rarely satisfied in practice. To overcome this drawback we impose Neumann boundary conditions on the data. This implies the use of cosine polynomials $\cos (\pi kx)$ as basis functions. We show that scattered data approximation using cosine poly...
We present an efficient method to automatically compute a smooth approximation of large functional s...
We consider the problem of approximating a function f from an Euclidean domain to a manifold M by sc...
We consider the problem of approximately reconstructing a function f defined on the surface of the u...
An important problem in applications is the approximation of a function $f$ from a finite s...
AbstractAn important problem in applications, such as signal and image procesing, is the approximati...
AbstractAn important problem in applications, such as signal and image procesing, is the approximati...
In this article, we introduce a type of basis functions to approximate a set of scattered data. Each...
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...
We extend the low-displacement-rank definition of close-to-Toeplitz (CT) matrices to close-to-Toepli...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
We consider scattered data approximation problems on SO(3). To this end, we construct a new operator...
The paper deals with the approximation and optimal interpolation of functions defined on the bispher...
The Krein integral equation of one-dimensional (1-D) inverse scattering and the Wiener-Hopf integral...
The Krein integral equation of one-dimensional (1-D) inverse scattering and the Wiener-Hopf integral...
We present an efficient method to automatically compute a smooth approximation of large functional s...
We consider the problem of approximating a function f from an Euclidean domain to a manifold M by sc...
We consider the problem of approximately reconstructing a function f defined on the surface of the u...
An important problem in applications is the approximation of a function $f$ from a finite s...
AbstractAn important problem in applications, such as signal and image procesing, is the approximati...
AbstractAn important problem in applications, such as signal and image procesing, is the approximati...
In this article, we introduce a type of basis functions to approximate a set of scattered data. Each...
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...
We extend the low-displacement-rank definition of close-to-Toeplitz (CT) matrices to close-to-Toepli...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
We consider scattered data approximation problems on SO(3). To this end, we construct a new operator...
The paper deals with the approximation and optimal interpolation of functions defined on the bispher...
The Krein integral equation of one-dimensional (1-D) inverse scattering and the Wiener-Hopf integral...
The Krein integral equation of one-dimensional (1-D) inverse scattering and the Wiener-Hopf integral...
We present an efficient method to automatically compute a smooth approximation of large functional s...
We consider the problem of approximating a function f from an Euclidean domain to a manifold M by sc...
We consider the problem of approximately reconstructing a function f defined on the surface of the u...