A georeferenced graph model for geospatial data matching by optimising measures of similarity across multiple scales
A georeferenced graph model for geospatial data matching by optimising measures of similarity across multiple scales
The growth of georeferenced data sources calls for advanced matching methods to improve the reliability of geospatial data processing, such as map conflation. Existing matching methods mainly focus on similarity measures at the entity scale or area scale. A measure that combines entity-scale and area-scale similarities can provide sound matching results under various circumstances. In this paper, we propose a georeferenced-graph model that integrates multiscale similarities for data matching. Specifically, a match of correspondent data objects is identified by the entity-scale measure under the constraint of the area-scale measure. Nodes in the proposed georeferenced graph model represent polygons by their centroids, whereas the links in the graph connect the nodes (i.e. centroids) according to pre-defined rules. Then, we develop an algorithm to identify many-to-many matches. We demonstrate the proposed graph model and algorithm in real-world experiments using OpenStreetMap data. The experimental results show that the proposed georeferenced-graph model can effectively integrate the context and the location-and-form distance of geospatial data matches across different datasets.
2339-2355
Zhang, Wen-Bin
a4ab325c-e9cb-4369-959b-25a3320bb4e3
Ge, Yong
f22fa40c-9a6a-456c-bdad-b322c3fd24ee
Leung, Yee
3c91651b-9061-44ad-9b31-ea21a80bf70a
Zhou, Yu
775d8c0f-0d7c-4ee1-895d-79fcf9e512f2
15 December 2020
Zhang, Wen-Bin
a4ab325c-e9cb-4369-959b-25a3320bb4e3
Ge, Yong
f22fa40c-9a6a-456c-bdad-b322c3fd24ee
Leung, Yee
3c91651b-9061-44ad-9b31-ea21a80bf70a
Zhou, Yu
775d8c0f-0d7c-4ee1-895d-79fcf9e512f2
Zhang, Wen-Bin, Ge, Yong, Leung, Yee and Zhou, Yu
(2020)
A georeferenced graph model for geospatial data matching by optimising measures of similarity across multiple scales.
International Journal of Geographical Information Science, 35 (11), .
(doi:10.1080/13658816.2020.1858301).
Abstract
The growth of georeferenced data sources calls for advanced matching methods to improve the reliability of geospatial data processing, such as map conflation. Existing matching methods mainly focus on similarity measures at the entity scale or area scale. A measure that combines entity-scale and area-scale similarities can provide sound matching results under various circumstances. In this paper, we propose a georeferenced-graph model that integrates multiscale similarities for data matching. Specifically, a match of correspondent data objects is identified by the entity-scale measure under the constraint of the area-scale measure. Nodes in the proposed georeferenced graph model represent polygons by their centroids, whereas the links in the graph connect the nodes (i.e. centroids) according to pre-defined rules. Then, we develop an algorithm to identify many-to-many matches. We demonstrate the proposed graph model and algorithm in real-world experiments using OpenStreetMap data. The experimental results show that the proposed georeferenced-graph model can effectively integrate the context and the location-and-form distance of geospatial data matches across different datasets.
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Accepted/In Press date: 28 November 2020
Published date: 15 December 2020
Identifiers
Local EPrints ID: 490421
URI: http://eprints.soton.ac.uk/id/eprint/490421
ISSN: 1365-8816
PURE UUID: 98f22cb8-c6f6-46bc-9c64-0a24a9138c22
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Date deposited: 24 May 2024 17:09
Last modified: 25 May 2024 02:10
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Author:
Wen-Bin Zhang
Author:
Yong Ge
Author:
Yee Leung
Author:
Yu Zhou
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