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Using GIS and machine learning to classify residential status of urban buildings in low and middle income settings

Using GIS and machine learning to classify residential status of urban buildings in low and middle income settings
Using GIS and machine learning to classify residential status of urban buildings in low and middle income settings
Utilising satellite images for planning and development is becoming a common practice as computational power and machine learning capabilities expand. In this paper, we explore the use of satellite image derived building footprint data to classify the residential status of urban buildings in low and middle income countries. A recently developed ensemble machine learning building classification model is applied for the first time to the Democratic Republic of the Congo, and to Nigeria. The model is informed by building footprint and label data of greater completeness and attribute consistency than have previously been available for these countries. A GIS workflow is described that semiautomates the preparation of data for input to the model. The workflow is designed to be particularly useful to those who apply the model to additional countries and use input data from diverse sources. Results show that the ensemble model correctly classifies between 85% and 93% of structures as residential and nonresidential across both countries. The classification outputs are likely to be valuable in the modelling of human population distributions, as well as in a range of related applications such as urban planning, resource allocation, and service delivery.
2072-4292
Lloyd, Christopher T.
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Sturrock, Hugh J.W.
466a210d-9012-4603-a261-0afc0a8b62bb
Leasure, Douglas
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Jochem, Warren
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Lazar, Attila
d7f835e7-1e3d-4742-b366-af19cf5fc881
Tatem, Andrew
6c6de104-a5f9-46e0-bb93-a1a7c980513e
Lloyd, Christopher T.
de6d850d-fba9-4f7e-9340-8ba750bfd9a6
Sturrock, Hugh J.W.
466a210d-9012-4603-a261-0afc0a8b62bb
Leasure, Douglas
c025de11-3c61-45b0-9b19-68d1d37959cd
Jochem, Warren
ef65df67-4364-4438-92e9-f93ceedb8da1
Lazar, Attila
d7f835e7-1e3d-4742-b366-af19cf5fc881
Tatem, Andrew
6c6de104-a5f9-46e0-bb93-a1a7c980513e

Lloyd, Christopher T., Sturrock, Hugh J.W., Leasure, Douglas, Jochem, Warren, Lazar, Attila and Tatem, Andrew (2020) Using GIS and machine learning to classify residential status of urban buildings in low and middle income settings. Remote Sensing, 12 (23), [3847]. (doi:10.3390/rs12233847).

Record type: Article

Abstract

Utilising satellite images for planning and development is becoming a common practice as computational power and machine learning capabilities expand. In this paper, we explore the use of satellite image derived building footprint data to classify the residential status of urban buildings in low and middle income countries. A recently developed ensemble machine learning building classification model is applied for the first time to the Democratic Republic of the Congo, and to Nigeria. The model is informed by building footprint and label data of greater completeness and attribute consistency than have previously been available for these countries. A GIS workflow is described that semiautomates the preparation of data for input to the model. The workflow is designed to be particularly useful to those who apply the model to additional countries and use input data from diverse sources. Results show that the ensemble model correctly classifies between 85% and 93% of structures as residential and nonresidential across both countries. The classification outputs are likely to be valuable in the modelling of human population distributions, as well as in a range of related applications such as urban planning, resource allocation, and service delivery.

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Accepted/In Press date: 19 November 2020
Published date: 24 November 2020

Identifiers

Local EPrints ID: 446158
URI: http://eprints.soton.ac.uk/id/eprint/446158
ISSN: 2072-4292
PURE UUID: 370d8257-9fce-4e1a-96a0-96a1c0dca6c8
ORCID for Christopher T. Lloyd: ORCID iD orcid.org/0000-0001-7435-8230
ORCID for Douglas Leasure: ORCID iD orcid.org/0000-0002-8768-2811
ORCID for Warren Jochem: ORCID iD orcid.org/0000-0003-2192-5988
ORCID for Attila Lazar: ORCID iD orcid.org/0000-0003-2033-2013
ORCID for Andrew Tatem: ORCID iD orcid.org/0000-0002-7270-941X

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Date deposited: 22 Jan 2021 17:31
Last modified: 17 Mar 2024 03:53

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Contributors

Author: Hugh J.W. Sturrock
Author: Douglas Leasure ORCID iD
Author: Warren Jochem ORCID iD
Author: Attila Lazar ORCID iD
Author: Andrew Tatem ORCID iD

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