Sheehy, Donald R.Eitan Grinspun and Niloy Mitra2015-02-282015-02-2820121467-8659https://doi.org/10.1111/j.1467-8659.2012.03168.xThe theory of optimal size meshes gives a method for analyzing the output size (number of simplices) of a Delaunay refinement mesh in terms of the integral of a sizing function over the input domain. The input points define a maximal such sizing function called the feature size. This paper presents a way to bound the feature size integral in terms of an easy to compute property of a suitable ordering of the point set. The key idea is to consider the pacing of an ordered point set, a measure of the rate of change in the feature size as points are added one at a time. In previous work, Miller et al. showed that if an ordered point set has pacing Φ, then the number of vertices in an optimal mesh will be O(Φ<sup>d</sup>n), where d is the input dimension. We give a new analysis of this integral showing that the output size is only<br> θ(n+nlogΦ). The new analysis tightens bounds from several previous results and provides matching lower bounds. Moreover, it precisely characterizes inputs that yield outputs of size O(n).F.2.2 [Analysis of Algorithms and Problem Complexity]Nonnumerical Algorithms and ProblemsGeometrical problems and computationsNew Bounds on the Size of Optimal Meshes10.1111/j.1467-8659.2012.03168.x