Automated Generalization of Facility Points-of-Interest With Service Area Delimitation

Point cluster generalization is a major concern in cartography. This problem is complicated by how to preserve the distribution patterns (e.g., density) of points during the process of deriving small-scale maps from a large-scale map. To address this problem, existing methods adopt geometric models...

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Main Authors: Wenhao Yu, Yifan Zhang, Zhanlong Chen
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8715780/
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spelling doaj-f9264c097c4a4038ae4bad7162184aa72021-03-29T22:57:48ZengIEEEIEEE Access2169-35362019-01-017639216393510.1109/ACCESS.2019.29169778715780Automated Generalization of Facility Points-of-Interest With Service Area DelimitationWenhao Yu0https://orcid.org/0000-0003-1521-2674Yifan Zhang1Zhanlong Chen2School of Geography and Information Engineering, China University of Geosciences, Wuhan, ChinaSchool of Geography and Information Engineering, China University of Geosciences, Wuhan, ChinaSchool of Geography and Information Engineering, China University of Geosciences, Wuhan, ChinaPoint cluster generalization is a major concern in cartography. This problem is complicated by how to preserve the distribution patterns (e.g., density) of points during the process of deriving small-scale maps from a large-scale map. To address this problem, existing methods adopt geometric models such as planar Voronoi diagram, which considers the geographic space as an ideal Euclidean one. The associated operations determine the relationships of points based on the Euclidean straight-line distance. However, many map features are in different geographic environments. For example, as one of the most significant features on a map, urban facilities rely on the transport function of street networks to compete for service areas, and thus their distributions, in reality, are constrained to the spatial layout of street networks. To preserve such characteristic after generalization, this paper establishes a network-constrained Voronoi model for delimitating service areas of facility points-of-interest (POIs). With the help of Voronoi model, the proposed method further treats the generalization process of facility POIs as a compete and merge iterative process of service areas: a facility that has a relatively small service area faces more intense competition from its neighbors and by deleting it from the resulting small-scale map in the first priority its service area will be partitioned and merged to the neighbors. The experimental results demonstrate that our method considers the service patterns of facility POIs is particularly useful in applications related to navigation.https://ieeexplore.ieee.org/document/8715780/Point patterncartographymap generalizationspatial databasepoints-of-interest
collection DOAJ
language English
format Article
sources DOAJ
author Wenhao Yu
Yifan Zhang
Zhanlong Chen
spellingShingle Wenhao Yu
Yifan Zhang
Zhanlong Chen
Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
IEEE Access
Point pattern
cartography
map generalization
spatial database
points-of-interest
author_facet Wenhao Yu
Yifan Zhang
Zhanlong Chen
author_sort Wenhao Yu
title Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
title_short Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
title_full Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
title_fullStr Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
title_full_unstemmed Automated Generalization of Facility Points-of-Interest With Service Area Delimitation
title_sort automated generalization of facility points-of-interest with service area delimitation
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Point cluster generalization is a major concern in cartography. This problem is complicated by how to preserve the distribution patterns (e.g., density) of points during the process of deriving small-scale maps from a large-scale map. To address this problem, existing methods adopt geometric models such as planar Voronoi diagram, which considers the geographic space as an ideal Euclidean one. The associated operations determine the relationships of points based on the Euclidean straight-line distance. However, many map features are in different geographic environments. For example, as one of the most significant features on a map, urban facilities rely on the transport function of street networks to compete for service areas, and thus their distributions, in reality, are constrained to the spatial layout of street networks. To preserve such characteristic after generalization, this paper establishes a network-constrained Voronoi model for delimitating service areas of facility points-of-interest (POIs). With the help of Voronoi model, the proposed method further treats the generalization process of facility POIs as a compete and merge iterative process of service areas: a facility that has a relatively small service area faces more intense competition from its neighbors and by deleting it from the resulting small-scale map in the first priority its service area will be partitioned and merged to the neighbors. The experimental results demonstrate that our method considers the service patterns of facility POIs is particularly useful in applications related to navigation.
topic Point pattern
cartography
map generalization
spatial database
points-of-interest
url https://ieeexplore.ieee.org/document/8715780/
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AT yifanzhang automatedgeneralizationoffacilitypointsofinterestwithserviceareadelimitation
AT zhanlongchen automatedgeneralizationoffacilitypointsofinterestwithserviceareadelimitation
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