Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable

The degree of spatial similarity plays an important role in map generalization, yet there has been no quantitative research into it. To fill this gap, this study first defines map scale change and spatial similarity degree/relation in multi-scale map spaces and then proposes a model for calculating...

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Main Authors: Weifang Yang, Haowen Yan, Jonathan Li
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2015-03-01
Series:Geodesy and Geodynamics
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1674984715000191
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spelling doaj-6805b463b7dd429aa84b566f1f3a53302021-02-02T04:21:21ZengKeAi Communications Co., Ltd.Geodesy and Geodynamics1674-98472015-03-016211312510.1016/j.geog.2015.03.002Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variableWeifang Yang0Haowen Yan1Jonathan Li2Department of GIS, Lanzhou Jiaotong University, Lanzhou 730070, ChinaDepartment of GIS, Lanzhou Jiaotong University, Lanzhou 730070, ChinaDepartment of Geography & Environmental Management, University of Waterloo, Waterloo, Ontario N2L 3G1, CanadaThe degree of spatial similarity plays an important role in map generalization, yet there has been no quantitative research into it. To fill this gap, this study first defines map scale change and spatial similarity degree/relation in multi-scale map spaces and then proposes a model for calculating the degree of spatial similarity between a point cloud at one scale and its generalized counterpart at another scale. After validation, the new model features 16 points with map scale change as the x coordinate and the degree of spatial similarity as the y coordinate. Finally, using an application for curve fitting, the model achieves an empirical formula that can calculate the degree of spatial similarity using map scale change as the sole independent variable, and vice versa. This formula can be used to automate algorithms for point feature generalization and to determine when to terminate them during the generalization.http://www.sciencedirect.com/science/article/pii/S1674984715000191Spatial similarity degreeMap generalizationMap scale changePoint cloudsQuantitative descriptionSpatial similarity relationsMulti-scale map spacesCurve fitting method
collection DOAJ
language English
format Article
sources DOAJ
author Weifang Yang
Haowen Yan
Jonathan Li
spellingShingle Weifang Yang
Haowen Yan
Jonathan Li
Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
Geodesy and Geodynamics
Spatial similarity degree
Map generalization
Map scale change
Point clouds
Quantitative description
Spatial similarity relations
Multi-scale map spaces
Curve fitting method
author_facet Weifang Yang
Haowen Yan
Jonathan Li
author_sort Weifang Yang
title Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
title_short Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
title_full Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
title_fullStr Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
title_full_unstemmed Formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
title_sort formula for calculating spatial similarity degrees between point clouds on multi-scale maps taking map scale change as the only independent variable
publisher KeAi Communications Co., Ltd.
series Geodesy and Geodynamics
issn 1674-9847
publishDate 2015-03-01
description The degree of spatial similarity plays an important role in map generalization, yet there has been no quantitative research into it. To fill this gap, this study first defines map scale change and spatial similarity degree/relation in multi-scale map spaces and then proposes a model for calculating the degree of spatial similarity between a point cloud at one scale and its generalized counterpart at another scale. After validation, the new model features 16 points with map scale change as the x coordinate and the degree of spatial similarity as the y coordinate. Finally, using an application for curve fitting, the model achieves an empirical formula that can calculate the degree of spatial similarity using map scale change as the sole independent variable, and vice versa. This formula can be used to automate algorithms for point feature generalization and to determine when to terminate them during the generalization.
topic Spatial similarity degree
Map generalization
Map scale change
Point clouds
Quantitative description
Spatial similarity relations
Multi-scale map spaces
Curve fitting method
url http://www.sciencedirect.com/science/article/pii/S1674984715000191
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AT jonathanli formulaforcalculatingspatialsimilaritydegreesbetweenpointcloudsonmultiscalemapstakingmapscalechangeastheonlyindependentvariable
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