Fitting Splines to a Parametric Function Fitting Splines to a Parametric Function
SpringerBriefs in Computer Science

Fitting Splines to a Parametric Function

    • 42,99 €
    • 42,99 €

Publisher Description

This Brief investigates the intersections that occur between three different areas of study that normally would not touch each other: ODF, spline theory, and topology.
The Least Squares Orthogonal Distance Fitting (ODF) method has become the standard technique used to develop mathematical models of the physical shapes of objects, due to the fact that it produces a fitted result that is invariant with respect to the size and orientation of the object. It is normally used to produce a single optimum fit to a specific object; this work focuses instead on the issue of whether the fit responds continuously as the shape of the object changes. The theory of splines develops user-friendly ways of manipulating six different splines to fit the shape of a simple family of epiTrochoid curves: two types of Bézier curve, two uniform B-splines, and two Beta-splines. This work will focus on issues that arise when mathematically optimizing the fit. There are typically multiple solutions to the ODF method, and the number of solutions can often change as the object changes shape, so two topological questions immediately arise: are there rules that can be applied concerning the relative number of local minima and saddle points, and are there different mechanisms available by which solutions can either merge and disappear, or cross over each other and interchange roles. The author proposes some simple rules which can be used to determine if a given set of solutions is internally consistent in the sense that it has the appropriate number of each type of solution.

GENRE
Computing & Internet
RELEASED
2019
23 February
LANGUAGE
EN
English
LENGTH
91
Pages
PUBLISHER
Springer International Publishing
SIZE
4.9
MB

Other Books in This Series

Homomorphic Encryption and Applications Homomorphic Encryption and Applications
2014
Open-Set Text Recognition Open-Set Text Recognition
2024
Applications of Game Theory in Deep Learning Applications of Game Theory in Deep Learning
2024
Reinforcement Learning for Reconfigurable Intelligent Surfaces Reinforcement Learning for Reconfigurable Intelligent Surfaces
2024
Manifold Learning Manifold Learning
2024
Edge Intelligent Computing Systems in Different Domains Edge Intelligent Computing Systems in Different Domains
2024