2021
DOI: 10.1007/978-3-030-83508-8_45
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Mapping Multiple Regions to the Grid with Bounded Hausdorff Distance

Abstract: We study a problem motivated by digital geometry: given a set of disjoint geometric regions, assign each region Ri a set of grid cells Pi, so that Pi is connected, similar to Ri, and does not touch any grid cell assigned to another region. Similarity is measured using the Hausdorff distance. We analyze the achievable Hausdorff distance in terms of the number of input regions, and prove asymptotically tight bounds for several classes of input regions.

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“…For related work concerning digital geometry in general and error bounds under the Hausdorff distance in the field of digital geometry in particular, see the introduction of Chapter 2. This chapter is inspired by two papers: Mapping Polygons to the Grid with Small Hausdorff and Fréchet Distance, by Bouts et al [26] and Mapping Multiple Regions to the Grid with Bounded Hausdorff Distance by van der Hoog et al [80]; the latter is treated in Chapter 2. Intuitively the problem discussed in these papers is: for a given set of regions, find a set of pixels from the unit grid that best represents the input (see Figure 3.1).…”
Section: Introductionmentioning
confidence: 99%
“…For related work concerning digital geometry in general and error bounds under the Hausdorff distance in the field of digital geometry in particular, see the introduction of Chapter 2. This chapter is inspired by two papers: Mapping Polygons to the Grid with Small Hausdorff and Fréchet Distance, by Bouts et al [26] and Mapping Multiple Regions to the Grid with Bounded Hausdorff Distance by van der Hoog et al [80]; the latter is treated in Chapter 2. Intuitively the problem discussed in these papers is: for a given set of regions, find a set of pixels from the unit grid that best represents the input (see Figure 3.1).…”
Section: Introductionmentioning
confidence: 99%