Using transfer learning to study burned area dynamics: A case study of refugee settlements in West Nile, Northern Uganda

R Huppertz, C Nakalembe, H Kerner… - arXiv preprint arXiv …, 2021 - arxiv.org
R Huppertz, C Nakalembe, H Kerner, R Lachyan, M Rischard
arXiv preprint arXiv:2107.14372, 2021arxiv.org
With the global refugee crisis at a historic high, there is a growing need to assess the impact
of refugee settlements on their hosting countries and surrounding environments. Because
fires are an important land management practice in smallholder agriculture in sub-Saharan
Africa, burned area (BA) mappings can help provide information about the impacts of land
management practices on local environments. However, a lack of BA ground-truth data in
much of sub-Saharan Africa limits the use of highly scalable deep learning (DL) techniques …
With the global refugee crisis at a historic high, there is a growing need to assess the impact of refugee settlements on their hosting countries and surrounding environments. Because fires are an important land management practice in smallholder agriculture in sub-Saharan Africa, burned area (BA) mappings can help provide information about the impacts of land management practices on local environments. However, a lack of BA ground-truth data in much of sub-Saharan Africa limits the use of highly scalable deep learning (DL) techniques for such BA mappings. In this work, we propose a scalable transfer learning approach to study BA dynamics in areas with little to no ground-truth data such as the West Nile region in Northern Uganda. We train a deep learning model on BA ground-truth data in Portugal and propose the application of that model on refugee-hosting districts in West Nile between 2015 and 2020. By comparing the district-level BA dynamic with the wider West Nile region, we aim to add understanding of the land management impacts of refugee settlements on their surrounding environments.
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