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Journal Article

Spline approximation, Part 1: Basic methodology

Authors

Ezhov,  N.
External Organizations;

Neitzel,  F.
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Petrovic,  S.
1.2 Global Geomonitoring and Gravity Field, 1.0 Geodesy, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum;

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3046891.pdf
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Citation

Ezhov, N., Neitzel, F., Petrovic, S. (2018): Spline approximation, Part 1: Basic methodology. - Journal of Applied Geodesy, 12, 2, 139-155.
https://doi.org/10.1515/jag-2017-0029


Cite as: https://gfzpublic.gfz-potsdam.de/pubman/item/item_3046891
Abstract
In engineering geodesy point clouds derived from terrestrial laser scanning or from photogrammetric approaches are almost never used as final results. For further processing and analysis a curve or surface approximation with a continuous mathematical function is required. In this paper the approximation of 2D curves by means of splines is treated. Splines offer quite flexible and elegant solutions for interpolation or approximation of “irregularly” distributed data. Depending on the problem they can be expressed as a function or as a set of equations that depend on some parameter. Many different types of splines can be used for spline approximation and all of them have certain advantages and disadvantages depending on the approximation problem. In a series of three articles spline approximation is presented from a geodetic point of view. In this paper (Part 1) the basic methodology of spline approximation is demonstrated using splines constructed from ordinary polynomials and splines constructed from truncated polynomials. In the forthcoming Part 2 the notion of B-spline will be explained in a unique way, namely by using the concept of convex combinations. The numerical stability of all spline approximation approaches as well as the utilization of splines for deformation detection will be investigated on numerical examples in Part 3.