Improving spatial coverage while preserving the blue noise of point sets

We explore the notion of a Well-spaced Blue-noise Distribution (WBD) of points, which combines two desirable properties. First, the point distribution is random, as measured by its spectrum having blue noise. Second, it is well-spaced in the sense that the minimum separation distance between samples...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Computer aided design 2014-01, Vol.46, p.25-36
Hauptverfasser: Ebeida, Mohamed S., Awad, Muhammad A., Ge, Xiaoyin, Mahmoud, Ahmed H., Mitchell, Scott A., Knupp, Patrick M., Wei, Li-Yi
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:We explore the notion of a Well-spaced Blue-noise Distribution (WBD) of points, which combines two desirable properties. First, the point distribution is random, as measured by its spectrum having blue noise. Second, it is well-spaced in the sense that the minimum separation distance between samples is large compared to the maximum coverage distance between a domain point and a sample, i.e. its Voronoi cell aspect ratios 2βi are small. It is well known that maximizing one of these properties destroys the other: uniform random points have no aspect ratio bound, and the vertices of an equilateral triangular tiling have no randomness. However, we show that there is a lot of room in the middle to get good values for both. Maximal Poisson-disk sampling provides β=1 and blue noise. We show that a standard optimization technique can improve the well-spacedness while preserving randomness. Given a random point set, our Opt-βi  algorithm iterates over the points, and for each point locally optimizes its Voronoi cell aspect ratio 2βi. It can improve βi to a large fraction of the theoretical bound given by a structured tiling: improving from 1.0 to around 0.8, about half-way to 0.58, while preserving most of the randomness of the original set. In terms of both β and randomness, the output of Opt-βi  compares favorably to alternative point improvement techniques, such as centroidal Voronoi tessellation with a constant density function, which do not target β directly. We demonstrate the usefulness of our output through meshing and filtering applications. An open problem is constructing from scratch a WBD distribution with a guarantee of β
ISSN:0010-4485
1879-2685
DOI:10.1016/j.cad.2013.08.015