creating a three level building classification using topographic and address-based data for manchester
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2014
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Abstract
Buildings, the basic unit of an urban landscape, host most of its socio-economic activities and play an important role in the creation
of urban land-use patterns. The spatial arrangement of different building types creates varied urban land-use clusters which can
provide an insight to understand the relationships between social, economic, and living spaces. The classification of such urban
clusters can help in policy-making and resource management. In many countries including the UK no national-level cadastral
database containing information on individual building types exists in public domain. In this paper, we present a framework for
inferring functional types of buildings based on the analysis of their form (e.g. geometrical properties, such as area and perimeter,
layout) and spatial relationship from large topographic and address-based GIS database. Machine learning algorithms along with
exploratory spatial analysis techniques are used to create the classification rules. The classification is extended to two further levels
based on the functions (use) of buildings derived from address-based data. The developed methodology was applied to the
Manchester metropolitan area using the Ordnance Survey‟s MasterMap®, a large-scale topographic and address-based data available
for the UK.
| Reference Key |
hussain2014isprscreating
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| Authors | ;M. Hussain;D. Chen |
| Journal | kolner zeitschrift fur soziologie und sozialpsychologie |
| Year | 2014 |
| DOI |
10.5194/isprsannals-II-2-67-2014
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