TY - JOUR
T1 - Analyzing Decades-Long Environmental Changes in Namibia Using Archival Aerial Photography and Deep Learning
AU - Tadesse, Girmaw Abebe
AU - Robinson, Caleb
AU - Hacheme, Gilles Quentin
AU - Zaytar, Akram
AU - Dodhia, Rahul
AU - Shawa, Tsering Wangyal
AU - Lavista Ferres, Juan M.
AU - Kreike, Emmanuel H.
N1 - Publisher Copyright:
© 2024 Copyright for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).
PY - 2025
Y1 - 2025
N2 - This study explores object detection in historical aerial photographs of Namibia to identify long-term environmental changes. Specifically, we aim to identify key objects - Waterholes, Omuti homesteads, and Big trees - around Oshikango in Namibia using sub-meter gray-scale aerial imagery from 1943 and 1972. In this work, we propose a workflow for analyzing historical aerial imagery using a deep semantic segmentation model on sparse hand-labels. To this end, we employ a number of strategies including class-weighting, pseudo-labeling and empirical p-value-based filtering to balance skewed and sparse representations of objects in the ground truth data. Results demonstrate the benefits of these different training strategies resulting in an average F1 = 0.661 and F1 = 0.755 over the three objects of interest for the 1943 and 1972 imagery, respectively. We also identified that the average size of Waterhole and Big trees increased while the average size of Omutis decreased between 1943 and 1972 reflecting some of the local effects of the massive post-Second World War economic, agricultural, demographic, and environmental changes. This work also highlights the untapped potential of historical aerial photographs in understanding long-term environmental changes beyond Namibia (and Africa). With the lack of adequate satellite technology in the past, archival aerial photography offers a great alternative to uncover decades-long environmental changes.
AB - This study explores object detection in historical aerial photographs of Namibia to identify long-term environmental changes. Specifically, we aim to identify key objects - Waterholes, Omuti homesteads, and Big trees - around Oshikango in Namibia using sub-meter gray-scale aerial imagery from 1943 and 1972. In this work, we propose a workflow for analyzing historical aerial imagery using a deep semantic segmentation model on sparse hand-labels. To this end, we employ a number of strategies including class-weighting, pseudo-labeling and empirical p-value-based filtering to balance skewed and sparse representations of objects in the ground truth data. Results demonstrate the benefits of these different training strategies resulting in an average F1 = 0.661 and F1 = 0.755 over the three objects of interest for the 1943 and 1972 imagery, respectively. We also identified that the average size of Waterhole and Big trees increased while the average size of Omutis decreased between 1943 and 1972 reflecting some of the local effects of the massive post-Second World War economic, agricultural, demographic, and environmental changes. This work also highlights the untapped potential of historical aerial photographs in understanding long-term environmental changes beyond Namibia (and Africa). With the lack of adequate satellite technology in the past, archival aerial photography offers a great alternative to uncover decades-long environmental changes.
KW - Aerial photos
KW - Africa
KW - Climate impact
KW - Geo-spatial machine learning
KW - Sustainability
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M3 - Conference article
AN - SCOPUS:105003388230
SN - 1613-0073
VL - 3951
SP - 3
EP - 13
JO - CEUR Workshop Proceedings
JF - CEUR Workshop Proceedings
T2 - 1st International Workshop on Sustainable Transition with AI 2024, STAI 2024
Y2 - 5 August 2024
ER -