Spanner for the $0/1/\infty$ weighted region problem
July 02, 2024 Β· Declared Dead Β· π Workshop on Algorithms and Data Structures
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Authors
Joachim Gudmundsson, Zijin Huang, AndrΓ© van Renssen, Sampson Wong
arXiv ID
2407.01951
Category
cs.CG: Computational Geometry
Cross-listed
cs.DS
Citations
0
Venue
Workshop on Algorithms and Data Structures
Last Checked
3 months ago
Abstract
We consider the problem of computing an approximate weighted shortest path in a weighted subdivision, with weights assigned from the set $\{0, 1, \infty\}$. We present a data structure $B$, which stores a set of convex, non-overlapping regions. These include zero-cost regions (0-regions) with a weight of $0$ and obstacles with a weight of $\infty$, all embedded in a plane with a weight of $1$. The data structure $B$ can be constructed in expected time $O(N + (n/\varepsilon^3)(\log(n/\varepsilon) + \log N))$, where $n$ is the total number of regions, $N$ represents the total complexity of the regions, and $1 + \varepsilon$ is the approximation factor, for any $0 < \varepsilon < 1$. Using $B$, one can compute an approximate weighted shortest path from any point $s$ to any point $t$ in $O(N + n/\varepsilon^3 + (n/\varepsilon^2) \log(n/\varepsilon) + (\log N)/\varepsilon)$ time. In the special case where the 0-regions and obstacles are polygons (not necessarily convex), $B$ contains a $(1 + \varepsilon)$-spanner of the input vertices.
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