Matching of urban pathways in a multi-scale database using fuzzy reasoning

One of the main steps of acquiring and handling data in a multi-scale database is generation of automatic links between corresponding objects in different scales, which is provided by matching them in the datasets. The basic concept of this process is to detect and measure the spatial similarity be...

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Main Authors: Ali Dehghani, Alireza Chehreghan, Rahim Ali Abbaspour
Format: Article
Language:English
Published: Vilnius Gediminas Technical University 2017-09-01
Series:Geodesy and Cartography
Subjects:
Online Access:https://journals.vgtu.lt/index.php/GAC/article/view/553
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spelling doaj-c8b670cb863b445ab01b6198003edb8e2021-07-02T05:00:46ZengVilnius Gediminas Technical UniversityGeodesy and Cartography2029-69912029-70092017-09-0143310.3846/20296991.2017.1371650Matching of urban pathways in a multi-scale database using fuzzy reasoningAli Dehghani0Alireza Chehreghan1Rahim Ali Abbaspour2School of Surveying and Geospatial Engineering, College of Engineering, University of Tehran, IranSchool of Surveying and Geospatial Engineering, College of Engineering, University of Tehran, IranSchool of Surveying and Geospatial Engineering, College of Engineering, University of Tehran, Iran One of the main steps of acquiring and handling data in a multi-scale database is generation of automatic links between corresponding objects in different scales, which is provided by matching them in the datasets. The basic concept of this process is to detect and measure the spatial similarity between various objects, which differ from one application to another, largely depends on the intrinsic properties of the input data. In fact, spatial similarity index, which is a function of other criteria such as geometric, topological, and semantic ones, is to some extent uncertain. Therefore, the present study aims to provide a matching algorithm based on fuzzy reasoning, while considering human spatial cognition. The proposed algorithm runs on two road datasets of Yazd city in Iran, which are in the scales of 1:5000 and 1:25000. The evaluation results show that matching rate and correctness of the algorithm is 92.7% and 88%, respectively, which validates the appropriate function of the proposed algorithm in matching. https://journals.vgtu.lt/index.php/GAC/article/view/553object matchingspatial similaritymulti-scalemulti-source databasefuzzy reasoning
collection DOAJ
language English
format Article
sources DOAJ
author Ali Dehghani
Alireza Chehreghan
Rahim Ali Abbaspour
spellingShingle Ali Dehghani
Alireza Chehreghan
Rahim Ali Abbaspour
Matching of urban pathways in a multi-scale database using fuzzy reasoning
Geodesy and Cartography
object matching
spatial similarity
multi-scale
multi-source database
fuzzy reasoning
author_facet Ali Dehghani
Alireza Chehreghan
Rahim Ali Abbaspour
author_sort Ali Dehghani
title Matching of urban pathways in a multi-scale database using fuzzy reasoning
title_short Matching of urban pathways in a multi-scale database using fuzzy reasoning
title_full Matching of urban pathways in a multi-scale database using fuzzy reasoning
title_fullStr Matching of urban pathways in a multi-scale database using fuzzy reasoning
title_full_unstemmed Matching of urban pathways in a multi-scale database using fuzzy reasoning
title_sort matching of urban pathways in a multi-scale database using fuzzy reasoning
publisher Vilnius Gediminas Technical University
series Geodesy and Cartography
issn 2029-6991
2029-7009
publishDate 2017-09-01
description One of the main steps of acquiring and handling data in a multi-scale database is generation of automatic links between corresponding objects in different scales, which is provided by matching them in the datasets. The basic concept of this process is to detect and measure the spatial similarity between various objects, which differ from one application to another, largely depends on the intrinsic properties of the input data. In fact, spatial similarity index, which is a function of other criteria such as geometric, topological, and semantic ones, is to some extent uncertain. Therefore, the present study aims to provide a matching algorithm based on fuzzy reasoning, while considering human spatial cognition. The proposed algorithm runs on two road datasets of Yazd city in Iran, which are in the scales of 1:5000 and 1:25000. The evaluation results show that matching rate and correctness of the algorithm is 92.7% and 88%, respectively, which validates the appropriate function of the proposed algorithm in matching.
topic object matching
spatial similarity
multi-scale
multi-source database
fuzzy reasoning
url https://journals.vgtu.lt/index.php/GAC/article/view/553
work_keys_str_mv AT alidehghani matchingofurbanpathwaysinamultiscaledatabaseusingfuzzyreasoning
AT alirezachehreghan matchingofurbanpathwaysinamultiscaledatabaseusingfuzzyreasoning
AT rahimaliabbaspour matchingofurbanpathwaysinamultiscaledatabaseusingfuzzyreasoning
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