We present a new scattered data fitting method, where local approximating polynomials are directly extended to smooth (C 1 or C 2) splines on a uniform triangulation (the four-directional mesh). The method is based on designing appropriate minimal determining sets consisting of whole triangles of domain points for a uniformly distributed subset of . This construction allows to use discrete polynomial least squares approximations to the local portions of the data directly as parts of the approximating spline. The remaining Bernstein-Bæ#169;zier coefficients are efficiently computed by extension, i.e., using the smoothness conditions. To obtain high quality local polynomial approximations even for difficult point constellations (e.g., with vo...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
We present an efficient method to automatically compute a smooth approximation of large functional s...
We suggest a local hybrid approximation scheme based on polynomials and radial basis functions, and ...
We suggest a local hybrid approximation scheme based on polynomials and radial basis functions, and ...
We present an efficient method to automatically compute a smooth approximation of large functional s...
In this paper we continue our earlier research [4] aimed at developing effcient methods of local app...
We present C1 methods for either interpolating data or for fitting scattered data associated with a ...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
Bivariate quadratic simplical B-splines defined by their corresponding set of knots derived from a (...
Locally refined B-spline (LRB) surfaces provide a representation that is well suited to scattered da...
In this paper we continue our earlier research [4] aimed at developing effcient methods of local app...
We present an efficient algorithm for approximating huge general volumetric data sets, i.e.~the data...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...
We present an efficient method to automatically compute a smooth approximation of large functional s...
We suggest a local hybrid approximation scheme based on polynomials and radial basis functions, and ...
We suggest a local hybrid approximation scheme based on polynomials and radial basis functions, and ...
We present an efficient method to automatically compute a smooth approximation of large functional s...
In this paper we continue our earlier research [4] aimed at developing effcient methods of local app...
We present C1 methods for either interpolating data or for fitting scattered data associated with a ...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
This paper describes a fast algorithm for scattered data interpolation and approximation. Multilevel...
Bivariate quadratic simplical B-splines defined by their corresponding set of knots derived from a (...
Locally refined B-spline (LRB) surfaces provide a representation that is well suited to scattered da...
In this paper we continue our earlier research [4] aimed at developing effcient methods of local app...
We present an efficient algorithm for approximating huge general volumetric data sets, i.e.~the data...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
We describe a method to create optimal linear spline approximations to arbitrary functions of one or...
Scattered data approximation refers to the computation of a multi-dimensional function from measurem...