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Autoři/Authors

Martin Fleischmann

Daniel Arribas-Bel

Alex Singleton

John Murray

Kategorie/Category

WoS a SCOPUS

Rok publikace/Published

2022

Název publikace/Name

Estimating generalized measures of local neighbourhood context from multispectral satellite images using a convolutional neural network

Citace/Citation

SINGLETON, A., ARRIBAS-BEL, D., MURRAY, J., FLEISCHMANN, M. (2022): Estimating generalized measures of local neighbourhood context from multispectral satellite images using a convolutional neural network. Computers, Environment and Urban Systems, 95, 101802.

Abstrakt/Abstract

The increased availability of high-resolution multispectral imagery captured by remote sensing platforms provides new opportunities for the characterisation and differentiation of urban context. The discovery of generalized latent representations from such data are however under researched within the social sciences. As such, this paper exploits advances in machine learning to implement a new method of capturing measures of urban context from multispectral satellite imagery at a very small area level through the application of a convolutional autoencoder (CAE). The utility of outputs from the CAE is enhanced through the application of spatial weighting, and the smoothed outputs are then summarised using cluster analysis to generate a typology comprising seven groups describing salient patterns of differentiated urban context. The limits of the technique are discussed with reference to the resolution of the satellite data utilised within the study and the interaction between the geography of the input data and the learned structure. The method is implemented within the context of Great Britain, however, is applicable to any location where similar high resolution multispectral imagery are available.

URRlab


Urbánní a regionální laboratoř

Katedra sociální geografie
a regionálního rozvoje

Univerzita Karlova
Přírodovědecká fakulta

Kontakt


Albertov 2038/6
128 43 Praha 2 - Nové Město

Kontaktní osoba
Jiří Nemeškal
jiri.nemeskal@natur.cuni.cz
211 951 972


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