In this paper we propose a new stable and accurate approximation technique which is extremely effective for interpolating large scattered data sets. The Partition of Unity (PU) method is performed considering Radial Basis Functions (RBFs) as local approximants and using locally supported weights. In particular, the approach consists in computing, for each PU subdomain, a stable basis. Such technique, taking advantage of the local scheme, leads to a significant benefit in terms of stability, especially for flat kernels. Furthermore, an optimized searching procedure is applied to build the local stable bases, thus rendering the method more efficient
AbstractAn efficient and flexible algorithm for the spherical interpolation of large scattered data ...
A new scheme for 3D reconstruction of implicit surfaces from large scattered point sets based on the...
It is well known that radial basis function interpolants suffer from bad conditioning if the basis o...
In this paper we propose a new stable and accurate approximation technique which is extremely effect...
This paper is dedicated to Prof. Francesco A. Costabile on the occasion of his 70th birthday In this...
We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Funct...
We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Funct...
3We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Func...
We combine the theory of radial basis function interpolation with a partition of unity method to so...
AbstractAn efficient and flexible algorithm for the spherical interpolation of large scattered data ...
We present an algorithm to approximate large dataset by Radial Basis Function (RBF) techniques. The ...
In this paper we analyze the behavior of product-type radial basis functions (RBFs) and splines, whi...
In this paper we propose two fast localized radial basis function fitting algorithms for solving lar...
In this paper we propose a fast algorithm for bivariate interpolation of large scattered data sets. ...
In the recent paper [1], a new method to compute stable kernel-based interpolants has been presented...
AbstractAn efficient and flexible algorithm for the spherical interpolation of large scattered data ...
A new scheme for 3D reconstruction of implicit surfaces from large scattered point sets based on the...
It is well known that radial basis function interpolants suffer from bad conditioning if the basis o...
In this paper we propose a new stable and accurate approximation technique which is extremely effect...
This paper is dedicated to Prof. Francesco A. Costabile on the occasion of his 70th birthday In this...
We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Funct...
We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Funct...
3We perform a local computation via the Partition of Unity (PU) method of rational Radial Basis Func...
We combine the theory of radial basis function interpolation with a partition of unity method to so...
AbstractAn efficient and flexible algorithm for the spherical interpolation of large scattered data ...
We present an algorithm to approximate large dataset by Radial Basis Function (RBF) techniques. The ...
In this paper we analyze the behavior of product-type radial basis functions (RBFs) and splines, whi...
In this paper we propose two fast localized radial basis function fitting algorithms for solving lar...
In this paper we propose a fast algorithm for bivariate interpolation of large scattered data sets. ...
In the recent paper [1], a new method to compute stable kernel-based interpolants has been presented...
AbstractAn efficient and flexible algorithm for the spherical interpolation of large scattered data ...
A new scheme for 3D reconstruction of implicit surfaces from large scattered point sets based on the...
It is well known that radial basis function interpolants suffer from bad conditioning if the basis o...