Detecting Hardly Visible Roads in Low-Resolution Satellite Time Series Data
Stefan Oehmcke, Christoffer Thrys{\o}e, Andreas Borgstad, Marcos, Antonio Vaz Salles, Martin Brandt, Fabian Gieseke

TL;DR
This paper introduces two deep learning frameworks for detecting roads in low-resolution satellite time series data, addressing challenges like missing data and cloud cover to improve global road inventory mapping.
Contribution
It proposes novel ordinal classification models that leverage satellite time series data, reducing manual data curation and enhancing large-scale road detection capabilities.
Findings
Models successfully identify large and medium roads
Time series data improves detection despite missing data and clouds
Approach simplifies global infrastructure mapping
Abstract
Massive amounts of satellite data have been gathered over time, holding the potential to unveil a spatiotemporal chronicle of the surface of Earth. These data allow scientists to investigate various important issues, such as land use changes, on a global scale. However, not all land-use phenomena are equally visible on satellite imagery. In particular, the creation of an inventory of the planet's road infrastructure remains a challenge, despite being crucial to analyze urbanization patterns and their impact. Towards this end, this work advances data-driven approaches for the automatic identification of roads based on open satellite data. Given the typical resolutions of these historical satellite data, we observe that there is inherent variation in the visibility of different road types. Based on this observation, we propose two deep learning frameworks that extend state-of-the-art deep…
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