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Mboga, N., Grippa, T., Georganos, S., Vanhuysse, S., Smets, B., Dewitte, O., Wolff, E. & Lennert, M. 2020. ‘Fully convolutional networks for land cover classification from historical panchromatic aerial photographs’. ISPRS Journal of Photogrammetry and Remote Sensing 167: 385-395. DOI: 10.1016/j.isprsjprs.2020.07.005. URL: https://www.sciencedirect.com/science/article/abs/pii/S0924271620301921 I.F. 7.319.
Article in a scientific Journal / Article in a Journal
Historical aerial photographs provide salient information on the
historical state of the landscape. The exploitation of these archives is
often limited by accessibility and the time-consuming process of
digitizing the analogue copies at a high resolution and processing them
with a proper photogrammetric workflow. Furthermore, these data are
characterised by limited spectral information since it occurs very often
in a single band. Our work presents a first application of deep
learning for the extraction of land cover from historical aerial
panchromatic photographs of the African cities of Goma, Bukavu and
Bujumbura. We evaluate the suitability of deep learning for land cover
generation from a challenging dataset of photographs from the 1940s and
1950s that covers large geographical extents and is characterised by
radiometric variations between dates and locations. A fully
convolutional approach is investigated by considering two network
architectures with different strategies of exploiting contextual
information: one used atrous convolutional layers without downsampling,
whereas the second network has both downsampling and learned upsampling
convolutional layers (U-NET). The networks are trained to detect three
main classes namely, buildings, high vegetation and a mixed class of
bare land and low vegetation class. High overall accuracies of >90%
in Goma-Gisenyi and Bukavu, and >85% in Bujumbura are obtained. This
work provides a novel methodology that outperforms a baseline standard
machine learning classifier for the exploitation of the vast archives of
historical aerial photographs that can aid long-term environmental
baseline studies. Future work will entail developing domain adaptation
strategies in order to make the trained network robust for different
image mosaics.