AbstractThis paper studies adaptive thinning strategies for approximating a large set of scattered data by piecewise linear functions over triangulated subsets. Our strategies depend on both the locations of the data points in the plane, and the values of the sampled function at these points—adaptive thinning. All our thinning strategies remove data points one by one, so as to minimize an estimate of the error that results by the removal of a point from the current set of points (this estimate is termed “anticipated error”). The thinning process generates subsets of “most significant” points, such that the piecewise linear interpolants over the Delaunay triangulations of these subsets approximate progressively the function values sampled at...
We present an efficient algorithm to obtain a triangulated graph surface for scattered points (x[?] ...
Abstract. Anisotropic triangulations provide efficient geometrical methods for sparse representation...
AbstractWe design and test a refined “angle between normals” criterion for the construction of data-...
This paper studies adaptive thinning strategies for approximating a large set of scattered data by p...
AbstractThis paper studies adaptive thinning strategies for approximating a large set of scattered d...
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...
Scattered data collected at sample points may be used to determine simple functions to best fit the ...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
This paper is concerning digital image compression by using adaptive thinning algorithms. Adaptive ...
We study the properties of a simple greedy algorithm introduced in [8] for the generation of data-ad...
AbstractThe constriction of range restricted univariate and bivariate C1 interpolants to scattered d...
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...
This paper describes a new method of monotone interpolation and smoothing of multivariate scattered ...
We present an efficient algorithm to obtain a triangulated graph surface for scattered points (x[?] ...
Abstract. Anisotropic triangulations provide efficient geometrical methods for sparse representation...
AbstractWe design and test a refined “angle between normals” criterion for the construction of data-...
This paper studies adaptive thinning strategies for approximating a large set of scattered data by p...
AbstractThis paper studies adaptive thinning strategies for approximating a large set of scattered d...
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...
Scattered data collected at sample points may be used to determine simple functions to best fit the ...
We present a new scattered data fitting method, where local approximating polynomials are directly e...
This paper is concerning digital image compression by using adaptive thinning algorithms. Adaptive ...
We study the properties of a simple greedy algorithm introduced in [8] for the generation of data-ad...
AbstractThe constriction of range restricted univariate and bivariate C1 interpolants to scattered d...
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...
This paper describes a new method of monotone interpolation and smoothing of multivariate scattered ...
We present an efficient algorithm to obtain a triangulated graph surface for scattered points (x[?] ...
Abstract. Anisotropic triangulations provide efficient geometrical methods for sparse representation...
AbstractWe design and test a refined “angle between normals” criterion for the construction of data-...