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Automated Highway Tag Assessment of OpenStreetMap Road Networks
Date Issued
2014-11
Date Available
2014-11-10T10:16:30Z
Abstract
OpenStreetMap (OSM) has been demonstrated to be a valuable source of spatial data in the context of many applications. However concerns still exist regarding the quality of such data and this has limited the proliferation of its use. Consequently much research has been invested in the development of methods for assessing and/or improving the quality of OSM data. However most of these methods require ground-truth data, which, in many cases, may not be available. In this paper we present a novel solution for OSM data quality assessment that does not require ground-truth data. We consider the semantic accuracy of OSM street network data, and in particular, the associated semantic class (road class) information. A machine learning model is proposed that learns the geometrical and topological characteristics of di erent semantic classes of streets. This model is subsequently used to accurately determine if a street has been assigned a correct/incorrect semantic class.
Sponsorship
Irish Research Council
Type of Material
Conference Publication
Publisher
ACM
Copyright (Published Version)
2014 ACM
Language
English
Status of Item
Peer reviewed
Conference Details
22nd ACM SIGSPATIAL (International Conference on Advances in Geographic Information Systems), Dallas, Texas, USA, 4-7 November, 2014
This item is made available under a Creative Commons License
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sigproc-sp.pdf
Size
147.94 KB
Format
Adobe PDF
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