Predicting road quality using high resolution satellite imagery: A transfer learning approach.

Recognizing the importance of road infrastructure to promote human health and economic development, actors around the globe are regularly investing in both new roads and road improvements. However, in many contexts there is a sparsity-or complete lack-of accurate information regarding existing road...

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Main Authors: Ethan Brewer, Jason Lin, Peter Kemper, John Hennin, Dan Runfola
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0253370&type=printable
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author Ethan Brewer
Jason Lin
Peter Kemper
John Hennin
Dan Runfola
author_facet Ethan Brewer
Jason Lin
Peter Kemper
John Hennin
Dan Runfola
author_sort Ethan Brewer
collection DOAJ
description Recognizing the importance of road infrastructure to promote human health and economic development, actors around the globe are regularly investing in both new roads and road improvements. However, in many contexts there is a sparsity-or complete lack-of accurate information regarding existing road infrastructure, challenging the effective identification of where investments should be made. Previous literature has focused on overcoming this gap through the use of satellite imagery to detect and map roads. In this piece, we extend this literature by leveraging satellite imagery to estimate road quality and concomitant information about travel speed. We adopt a transfer learning approach in which a convolutional neural network architecture is first trained on data collected in the United States (where data is readily available), and then "fine-tuned" on an independent, smaller dataset collected from Nigeria. We test and compare eight different convolutional neural network architectures using a dataset of 53,686 images of 2,400 kilometers of roads in the United States, in which each road segment is measured as "low", "middle", or "high" quality using an open, cellphone-based measuring platform. Using satellite imagery to estimate these classes, we achieve an accuracy of 80.0%, with 99.4% of predictions falling within the actual or an adjacent class. The highest performing base model was applied to a preliminary case study in Nigeria, using a dataset of 1,000 images of paved and unpaved roads. By tailoring our US-model on the basis of this Nigeria-specific data, we were able to achieve an accuracy of 94.0% in predicting the quality of Nigerian roads. A continuous case estimate also showed the ability, on average, to predict road quality to within 0.32 on a 0 to 3 scale (with higher values indicating higher levels of quality).
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spelling doaj-art-3049a5bdc60d4bcda31227041cbc08dd2025-08-20T02:01:05ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01167e025337010.1371/journal.pone.0253370Predicting road quality using high resolution satellite imagery: A transfer learning approach.Ethan BrewerJason LinPeter KemperJohn HenninDan RunfolaRecognizing the importance of road infrastructure to promote human health and economic development, actors around the globe are regularly investing in both new roads and road improvements. However, in many contexts there is a sparsity-or complete lack-of accurate information regarding existing road infrastructure, challenging the effective identification of where investments should be made. Previous literature has focused on overcoming this gap through the use of satellite imagery to detect and map roads. In this piece, we extend this literature by leveraging satellite imagery to estimate road quality and concomitant information about travel speed. We adopt a transfer learning approach in which a convolutional neural network architecture is first trained on data collected in the United States (where data is readily available), and then "fine-tuned" on an independent, smaller dataset collected from Nigeria. We test and compare eight different convolutional neural network architectures using a dataset of 53,686 images of 2,400 kilometers of roads in the United States, in which each road segment is measured as "low", "middle", or "high" quality using an open, cellphone-based measuring platform. Using satellite imagery to estimate these classes, we achieve an accuracy of 80.0%, with 99.4% of predictions falling within the actual or an adjacent class. The highest performing base model was applied to a preliminary case study in Nigeria, using a dataset of 1,000 images of paved and unpaved roads. By tailoring our US-model on the basis of this Nigeria-specific data, we were able to achieve an accuracy of 94.0% in predicting the quality of Nigerian roads. A continuous case estimate also showed the ability, on average, to predict road quality to within 0.32 on a 0 to 3 scale (with higher values indicating higher levels of quality).https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0253370&type=printable
spellingShingle Ethan Brewer
Jason Lin
Peter Kemper
John Hennin
Dan Runfola
Predicting road quality using high resolution satellite imagery: A transfer learning approach.
PLoS ONE
title Predicting road quality using high resolution satellite imagery: A transfer learning approach.
title_full Predicting road quality using high resolution satellite imagery: A transfer learning approach.
title_fullStr Predicting road quality using high resolution satellite imagery: A transfer learning approach.
title_full_unstemmed Predicting road quality using high resolution satellite imagery: A transfer learning approach.
title_short Predicting road quality using high resolution satellite imagery: A transfer learning approach.
title_sort predicting road quality using high resolution satellite imagery a transfer learning approach
url https://journals.plos.org/plosone/article/file?id=10.1371/journal.pone.0253370&type=printable
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AT johnhennin predictingroadqualityusinghighresolutionsatelliteimageryatransferlearningapproach
AT danrunfola predictingroadqualityusinghighresolutionsatelliteimageryatransferlearningapproach