Matching disparate geospatial datasets and validating matches using spatial logic

In recent years, the emergence and development of crowd-sourced geospatial data has provided challenges and opportunities to national mapping agencies as well as commercial mapping organisations. Crowd-sourced data involves non-specialists in data collection, sharing and maintenance. Compared to aut...

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Main Author: Du, Heshan
Format: Thesis (University of Nottingham only)
Language:English
Published: 2015
Subjects:
Online Access:https://eprints.nottingham.ac.uk/28982/
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author Du, Heshan
author_facet Du, Heshan
author_sort Du, Heshan
building Nottingham Research Data Repository
collection Online Access
description In recent years, the emergence and development of crowd-sourced geospatial data has provided challenges and opportunities to national mapping agencies as well as commercial mapping organisations. Crowd-sourced data involves non-specialists in data collection, sharing and maintenance. Compared to authoritative geospatial data, which is collected by surveyors or other geodata professionals, crowd-sourced data is less accurate and less structured, but often provides richer user-based information and reflects real world changes more quickly at a much lower cost. In order to maximize the synergistic use of authoritative and crowd-sourced geospatial data, this research investigates the problem of how to establish and validate correspondences (matches) between spatial features from disparate geospatial datasets. To reason about and validate matches between spatial features, a series of new qualitative spatial logics was developed. Their soundness, completeness, decidability and complexity theorems were proved for models based on a metric space. A software tool `MatchMaps' was developed, which generates matches using location and lexical information, and verifies consistency of matches using reasoning in description logic and qualitative spatial logic. MatchMaps was evaluated by the author and experts from Ordnance Survey, the national mapping agency of Great Britain. In experiments, it achieved high precision and recall, as well as reduced human effort. The methodology developed and implemented in MatchMaps has a wider application than matching authoritative and crowd-sourced data and could be applied wherever it is necessary to match two geospatial datasets of vector data.
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spelling nottingham-289822025-02-28T11:35:00Z https://eprints.nottingham.ac.uk/28982/ Matching disparate geospatial datasets and validating matches using spatial logic Du, Heshan In recent years, the emergence and development of crowd-sourced geospatial data has provided challenges and opportunities to national mapping agencies as well as commercial mapping organisations. Crowd-sourced data involves non-specialists in data collection, sharing and maintenance. Compared to authoritative geospatial data, which is collected by surveyors or other geodata professionals, crowd-sourced data is less accurate and less structured, but often provides richer user-based information and reflects real world changes more quickly at a much lower cost. In order to maximize the synergistic use of authoritative and crowd-sourced geospatial data, this research investigates the problem of how to establish and validate correspondences (matches) between spatial features from disparate geospatial datasets. To reason about and validate matches between spatial features, a series of new qualitative spatial logics was developed. Their soundness, completeness, decidability and complexity theorems were proved for models based on a metric space. A software tool `MatchMaps' was developed, which generates matches using location and lexical information, and verifies consistency of matches using reasoning in description logic and qualitative spatial logic. MatchMaps was evaluated by the author and experts from Ordnance Survey, the national mapping agency of Great Britain. In experiments, it achieved high precision and recall, as well as reduced human effort. The methodology developed and implemented in MatchMaps has a wider application than matching authoritative and crowd-sourced data and could be applied wherever it is necessary to match two geospatial datasets of vector data. 2015-07-15 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en arr https://eprints.nottingham.ac.uk/28982/1/Thesis-HeshanDu-2015.pdf Du, Heshan (2015) Matching disparate geospatial datasets and validating matches using spatial logic. PhD thesis, University of Nottingham. spatial logic geospatial data matching crowd-sourced geospatial data ontology matching description logic consistency of matches
spellingShingle spatial logic
geospatial data matching
crowd-sourced geospatial data
ontology matching
description logic
consistency of matches
Du, Heshan
Matching disparate geospatial datasets and validating matches using spatial logic
title Matching disparate geospatial datasets and validating matches using spatial logic
title_full Matching disparate geospatial datasets and validating matches using spatial logic
title_fullStr Matching disparate geospatial datasets and validating matches using spatial logic
title_full_unstemmed Matching disparate geospatial datasets and validating matches using spatial logic
title_short Matching disparate geospatial datasets and validating matches using spatial logic
title_sort matching disparate geospatial datasets and validating matches using spatial logic
topic spatial logic
geospatial data matching
crowd-sourced geospatial data
ontology matching
description logic
consistency of matches
url https://eprints.nottingham.ac.uk/28982/