Seminario di analisi numerica
ore
15:00
presso Seminario I
A generalized spline space is a space of piecewise functions, locally spanned by functions of polynomial
and non-polynomial type, such as trigonometric or hyperbolic. Therefore generalized splines are a superset of polynomial splines. Compared to the latter, they are superior for their capacity of reproducing fundamental functions and for their effectiveness in handling shape preserving approximation problems.
At the same time, generalized splines can be quite easily differentiated and integrated, which is their
main advantage over Non-Uniform Rational B-Splines (NURBS). Despite being initially meant for Geometric Modeling application, in the latest years their interest has been mainly connected to Multiresolution Analysis and Isogeometric Analysis.
A generalized spline space is suitable for applications when it has a local, computationally stable
basis and when this feature is preserved under knot insertion. These requirements are equivalent to
saying that the space must have an Optimal Normalized Totally Positive Basis.
Unfortunately, not all generalized spline spaces admit such basis, and, even when this is the case, its
computation may be very challenging.
In this talk we present a simple and general approach for the construction and computation of the ONTP
basis and we provide some insights on the problem of determining whether such basis exists in a given
spline space.