Discret. Comput. Geom. | 2021

Randomized Incremental Construction of Delaunay Triangulations of Nice Point Sets

 
 
 
 

Abstract


Randomized incremental construction (RIC) is one of the most important paradigms for building geometric data structures. Clarkson and Shor developed a general theory that led to numerous algorithms which are both simple and efficient in theory and in practice. Randomized incremental constructions are usually space-optimal and time-optimal in the worst case, as exemplified by the construction of convex hulls, Delaunay triangulations, and arrangements of line segments. However, the worst-case scenario occurs rarely in practice and we would like to understand how RIC behaves when the input is nice in the sense that the associated output is significantly smaller than in the worst case. For example, it is known that the Delaunay triangulation of nicely distributed points in $${\\mathbb {E}}^d$$\n \n \n E\n \n d\n \n or on polyhedral surfaces in $${\\mathbb {E}}^3$$\n \n \n E\n \n 3\n \n has linear complexity, as opposed to a worst-case complexity of $$\\Theta (n^{\\lfloor d/2\\rfloor })$$\n \n Θ\n (\n \n n\n \n ⌊\n d\n /\n 2\n ⌋\n \n \n )\n \n in the first case and quadratic in the second. The standard analysis does not provide accurate bounds on the complexity of such cases and we aim at establishing such bounds in this paper. More precisely, we will show that, in the two cases above and variants of them, the complexity of the usual RIC is $$O(n\\log n)$$\n \n O\n (\n n\n log\n n\n )\n \n , which is optimal. In other words, without any modification, RIC nicely adapts to good cases of practical value. At the heart of our proof is a bound on the complexity of the Delaunay triangulation of random subsets of $${\\varepsilon }$$\n ε\n -nets. Along the way, we prove a probabilistic lemma for sampling without replacement, which may be of independent interest.

Volume 66
Pages 236-268
DOI 10.1007/s00454-020-00235-7
Language English
Journal Discret. Comput. Geom.

Full Text