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Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain

BACKGROUND: Street imagery is a promising and growing big data source providing current and historical images in more than 100 countries. Studies have reported using this data to audit road infrastructure and other built environment features. Here we explore a novel application, using Google Street...

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Autores principales: Goel, Rahul, Garcia, Leandro M. T., Goodman, Anna, Johnson, Rob, Aldred, Rachel, Murugesan, Manoradhan, Brage, Soren, Bhalla, Kavi, Woodcock, James
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5931639/
https://www.ncbi.nlm.nih.gov/pubmed/29718953
http://dx.doi.org/10.1371/journal.pone.0196521
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author Goel, Rahul
Garcia, Leandro M. T.
Goodman, Anna
Johnson, Rob
Aldred, Rachel
Murugesan, Manoradhan
Brage, Soren
Bhalla, Kavi
Woodcock, James
author_facet Goel, Rahul
Garcia, Leandro M. T.
Goodman, Anna
Johnson, Rob
Aldred, Rachel
Murugesan, Manoradhan
Brage, Soren
Bhalla, Kavi
Woodcock, James
author_sort Goel, Rahul
collection PubMed
description BACKGROUND: Street imagery is a promising and growing big data source providing current and historical images in more than 100 countries. Studies have reported using this data to audit road infrastructure and other built environment features. Here we explore a novel application, using Google Street View (GSV) to predict travel patterns at the city level. METHODS: We sampled 34 cities in Great Britain. In each city, we accessed 2000 GSV images from 1000 random locations. We selected archived images from time periods overlapping with the 2011 Census and the 2011–2013 Active People Survey (APS). We manually annotated the images into seven categories of road users. We developed regression models with the counts of images of road users as predictors. The outcomes included Census-reported commute shares of four modes (combined walking plus public transport, cycling, motorcycle, and car), as well as APS-reported past-month participation in walking and cycling. RESULTS: We found high correlations between GSV counts of cyclists (‘GSV-cyclists’) and cycle commute mode share (r = 0.92)/past-month cycling (r = 0.90). Likewise, GSV-pedestrians was moderately correlated with past-month walking for transport (r = 0.46), GSV-motorcycles was moderately correlated with commute share of motorcycles (r = 0.44), and GSV-buses was highly correlated with commute share of walking plus public transport (r = 0.81). GSV-car was not correlated with car commute mode share (r = –0.12). However, in multivariable regression models, all outcomes were predicted well, except past-month walking. The prediction performance was measured using cross-validation analyses. GSV-buses and GSV-cyclists are the strongest predictors for most outcomes. CONCLUSIONS: GSV images are a promising new big data source to predict urban mobility patterns. Predictive power was the greatest for those modes that varied the most (cycle and bus). With its ability to identify mode of travel and capture street activity often excluded in routinely carried out surveys, GSV has the potential to be complementary to new and traditional data. With half the world’s population covered by street imagery, and with up to 10 years historical data available in GSV, further testing across multiple settings is warranted both for cross-sectional and longitudinal assessments.
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spelling pubmed-59316392018-05-11 Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain Goel, Rahul Garcia, Leandro M. T. Goodman, Anna Johnson, Rob Aldred, Rachel Murugesan, Manoradhan Brage, Soren Bhalla, Kavi Woodcock, James PLoS One Research Article BACKGROUND: Street imagery is a promising and growing big data source providing current and historical images in more than 100 countries. Studies have reported using this data to audit road infrastructure and other built environment features. Here we explore a novel application, using Google Street View (GSV) to predict travel patterns at the city level. METHODS: We sampled 34 cities in Great Britain. In each city, we accessed 2000 GSV images from 1000 random locations. We selected archived images from time periods overlapping with the 2011 Census and the 2011–2013 Active People Survey (APS). We manually annotated the images into seven categories of road users. We developed regression models with the counts of images of road users as predictors. The outcomes included Census-reported commute shares of four modes (combined walking plus public transport, cycling, motorcycle, and car), as well as APS-reported past-month participation in walking and cycling. RESULTS: We found high correlations between GSV counts of cyclists (‘GSV-cyclists’) and cycle commute mode share (r = 0.92)/past-month cycling (r = 0.90). Likewise, GSV-pedestrians was moderately correlated with past-month walking for transport (r = 0.46), GSV-motorcycles was moderately correlated with commute share of motorcycles (r = 0.44), and GSV-buses was highly correlated with commute share of walking plus public transport (r = 0.81). GSV-car was not correlated with car commute mode share (r = –0.12). However, in multivariable regression models, all outcomes were predicted well, except past-month walking. The prediction performance was measured using cross-validation analyses. GSV-buses and GSV-cyclists are the strongest predictors for most outcomes. CONCLUSIONS: GSV images are a promising new big data source to predict urban mobility patterns. Predictive power was the greatest for those modes that varied the most (cycle and bus). With its ability to identify mode of travel and capture street activity often excluded in routinely carried out surveys, GSV has the potential to be complementary to new and traditional data. With half the world’s population covered by street imagery, and with up to 10 years historical data available in GSV, further testing across multiple settings is warranted both for cross-sectional and longitudinal assessments. Public Library of Science 2018-05-02 /pmc/articles/PMC5931639/ /pubmed/29718953 http://dx.doi.org/10.1371/journal.pone.0196521 Text en © 2018 Goel et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Goel, Rahul
Garcia, Leandro M. T.
Goodman, Anna
Johnson, Rob
Aldred, Rachel
Murugesan, Manoradhan
Brage, Soren
Bhalla, Kavi
Woodcock, James
Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title_full Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title_fullStr Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title_full_unstemmed Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title_short Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain
title_sort estimating city-level travel patterns using street imagery: a case study of using google street view in britain
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5931639/
https://www.ncbi.nlm.nih.gov/pubmed/29718953
http://dx.doi.org/10.1371/journal.pone.0196521
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