Book contents
- Frontmatter
- Contents
- List of contributors
- Preface
- 1 Characterization and construction of radial basis functions
- 2 Approximation and interpolation with radial functions
- 3 Representing and analyzing scattered data on spheres
- 4 A survey on L2-approximation orders from shift-invariant spaces
- 5 Introduction to shift-invariant spaces. Linear independence
- 6 Theory and algorithms for nonuniform spline wavelets
- 7 Applied and computational aspects of nonlinear wavelet approximation
- 8 Subdivision, multiresolution and the construction of scalable algorithms in computer graphics
- 9 Mathematical methods in reverse engineering
- Index
3 - Representing and analyzing scattered data on spheres
Published online by Cambridge University Press: 06 July 2010
- Frontmatter
- Contents
- List of contributors
- Preface
- 1 Characterization and construction of radial basis functions
- 2 Approximation and interpolation with radial functions
- 3 Representing and analyzing scattered data on spheres
- 4 A survey on L2-approximation orders from shift-invariant spaces
- 5 Introduction to shift-invariant spaces. Linear independence
- 6 Theory and algorithms for nonuniform spline wavelets
- 7 Applied and computational aspects of nonlinear wavelet approximation
- 8 Subdivision, multiresolution and the construction of scalable algorithms in computer graphics
- 9 Mathematical methods in reverse engineering
- Index
Summary
Abstract
Geophysical or meteorological data collected over the surface of the earth via satellites or ground stations will invariably come from scattered sites. There are two extremes in the problems one faces in handling such data. The first is representing sparse data by fitting a surface to it. This arises in geodesy in conjunction with measurements of the gravitation field from satellites, or meteorological measurements – temperature, for example – made at ground stations. The second is analyzing dense data to extract features of interest. For example, one may wish to process satellite images for mapping purposes. Between these two extremes there are many other problems. We will review various aspects of fitting surfaces to scattered data, addressing problems involving interpolation and order of approximation, and quadratures. Analyzing data is a more recent problem that is currently being addressed via various spherical wavelet schemes, which we will review, along with multilevel schemes. We close by discussing quadrature methods, which arise in many of the wavelet schemes as well as some interpolation methods.
Introduction
Overview
In this survey, we discuss recent progress in the representation and analysis of scattered data on spheres. As is the case with ℝs, many practical problems have stimulated interest in this direction. More and more data is taken from satellites each year. This, in turn, requires for example, improved image processing techniques for fault detection and for generation of maps.
- Type
- Chapter
- Information
- Multivariate Approximation and Applications , pp. 44 - 72Publisher: Cambridge University PressPrint publication year: 2001
- 14
- Cited by