Fast building segmentation from satellite imagery and few local labels
Innovations in computer vision algorithms for satellite image analysis can enable us to explore global challenges such as urbanization and land use change at the planetary level. However, domain shift problems are a common occurrence when trying to replicate models that drive these analyses to new a...
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Zusammenfassung: | Innovations in computer vision algorithms for satellite image analysis can
enable us to explore global challenges such as urbanization and land use change
at the planetary level. However, domain shift problems are a common occurrence
when trying to replicate models that drive these analyses to new areas,
particularly in the developing world. If a model is trained with imagery and
labels from one location, then it usually will not generalize well to new
locations where the content of the imagery and data distributions are
different. In this work, we consider the setting in which we have a single
large satellite imagery scene over which we want to solve an applied problem --
building footprint segmentation. Here, we do not necessarily need to worry
about creating a model that generalizes past the borders of our scene but can
instead train a local model. We show that surprisingly few labels are needed to
solve the building segmentation problem with very high-resolution (0.5m/px)
satellite imagery with this setting in mind. Our best model trained with just
527 sparse polygon annotations (an equivalent of 1500 x 1500 densely labeled
pixels) has a recall of 0.87 over held out footprints and a R2 of 0.93 on the
task of counting the number of buildings in 200 x 200-meter windows. We apply
our models over high-resolution imagery in Amman, Jordan in a case study on
urban change detection. |
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DOI: | 10.48550/arxiv.2206.05377 |