Semantic Similarity Assessment of Volunteered Geographic Information

The recent development in communication technologies between individuals allows for the establishment of more informal collaborative map data projects which are called volunteered geographic information (VGI). These projects, such as OpenStreetMap (OSM) project, seek to create free alternative maps...

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Main Author: Maythm M. Albakri, Dr
Format: Article
Language:English
Published: University of Baghdad 2016-01-01
Series:Journal of Engineering
Subjects:
Online Access:http://joe.uobaghdad.edu.iq/index.php/main/article/view/282
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author Maythm M. Albakri, Dr
author_facet Maythm M. Albakri, Dr
author_sort Maythm M. Albakri, Dr
collection DOAJ
description The recent development in communication technologies between individuals allows for the establishment of more informal collaborative map data projects which are called volunteered geographic information (VGI). These projects, such as OpenStreetMap (OSM) project, seek to create free alternative maps which let users add or input new materials to the data of others. The information of different VGI data sources is often not compliant to any standard and each organization is producing a dataset at various level of richness. In this research the assessment of semantic data quality provided by web sources, e.g. OSM will depend on a comparison with the information from standard sources. This will include the validity of semantic accuracy as one of the most important parameter of spatial data quality parameters. Semantic similarity testing covered feature classification, in effect comparing possible categories (legend classes) and actual attributes attached to features. This will be achieved by developing a tool, using Matlab programming language, for analysing and examining OSM semantic accuracy. To identify the strength of semantic accuracy assessment strategy, there are many factors should be considered. For instance, the confusion matrix of feature classifications can be assessed, and different statistical tests should be passed. The results revealed good semantic accuracy of OSM datasets.
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spelling doaj.art-e93eb19ef23549ff8a1d52ad97eb02082023-09-02T09:18:52ZengUniversity of BaghdadJournal of Engineering1726-40732520-33392016-01-01221Semantic Similarity Assessment of Volunteered Geographic InformationMaythm M. Albakri, Dr0College of Engineering-University of BaghdadThe recent development in communication technologies between individuals allows for the establishment of more informal collaborative map data projects which are called volunteered geographic information (VGI). These projects, such as OpenStreetMap (OSM) project, seek to create free alternative maps which let users add or input new materials to the data of others. The information of different VGI data sources is often not compliant to any standard and each organization is producing a dataset at various level of richness. In this research the assessment of semantic data quality provided by web sources, e.g. OSM will depend on a comparison with the information from standard sources. This will include the validity of semantic accuracy as one of the most important parameter of spatial data quality parameters. Semantic similarity testing covered feature classification, in effect comparing possible categories (legend classes) and actual attributes attached to features. This will be achieved by developing a tool, using Matlab programming language, for analysing and examining OSM semantic accuracy. To identify the strength of semantic accuracy assessment strategy, there are many factors should be considered. For instance, the confusion matrix of feature classifications can be assessed, and different statistical tests should be passed. The results revealed good semantic accuracy of OSM datasets.http://joe.uobaghdad.edu.iq/index.php/main/article/view/282OpenStreetMap; Semantic; Classification; Accuracy; Confusion Matrix
spellingShingle Maythm M. Albakri, Dr
Semantic Similarity Assessment of Volunteered Geographic Information
Journal of Engineering
OpenStreetMap; Semantic; Classification; Accuracy; Confusion Matrix
title Semantic Similarity Assessment of Volunteered Geographic Information
title_full Semantic Similarity Assessment of Volunteered Geographic Information
title_fullStr Semantic Similarity Assessment of Volunteered Geographic Information
title_full_unstemmed Semantic Similarity Assessment of Volunteered Geographic Information
title_short Semantic Similarity Assessment of Volunteered Geographic Information
title_sort semantic similarity assessment of volunteered geographic information
topic OpenStreetMap; Semantic; Classification; Accuracy; Confusion Matrix
url http://joe.uobaghdad.edu.iq/index.php/main/article/view/282
work_keys_str_mv AT maythmmalbakridr semanticsimilarityassessmentofvolunteeredgeographicinformation