Mapping Remote Roads Using Artificial Intelligence and Satellite Imagery

Author:

Sloan Sean12ORCID,Talkhani Raiyan R.3,Huang Tao3ORCID,Engert Jayden1ORCID,Laurance William F.1ORCID

Affiliation:

1. Centre for Tropical Environmental and Sustainability Science, College of Science and Engineering, James Cook University, Cairns, Queensland 4878, Australia

2. Department of Geography, Vancouver Island University, Nanaimo, BC V9R 5S5, Canada

3. College of Science and Engineering, James Cook University, Cairns, Queensland 4878, Australia

Abstract

Road building has long been under-mapped globally, arguably more than any other human activity threatening environmental integrity. Millions of kilometers of unmapped roads have challenged environmental governance and conservation in remote frontiers. Prior attempts to map roads at large scales have proven inefficient, incomplete, and unamenable to continuous road monitoring. Recent developments in automated road detection using artificial intelligence have been promising but have neglected the relatively irregular, sparse, rustic roadways characteristic of remote semi-natural areas. In response, we tested the accuracy of automated approaches to large-scale road mapping across remote rural and semi-forested areas of equatorial Asia-Pacific. Three machine learning models based on convolutional neural networks (UNet and two ResNet variants) were trained on road data derived from visual interpretations of freely available high-resolution satellite imagery. The models mapped roads with appreciable accuracies, with F1 scores of 72–81% and intersection over union scores of 43–58%. These results, as well as the purposeful simplicity and availability of our input data, support the possibility of concerted program of exhaustive, automated road mapping and monitoring across large, remote, tropical areas threatened by human encroachment.

Funder

Canada Research Chair from The Canadian Tri-Agency Scientific Funding Body

James Cook University

private philanthropic foundation

Publisher

MDPI AG

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