A deep learning model based on the ResNet50 architecture was developed to detect damaged buildings on satellite images of Mariupol acquired in 2024, with an estimated accuracy of 98.7% on test data and 95.7% on real data. The model was applied to classify damaged buildings in the Left Bank district of Mariupol, where significant destruction was found, especially in the western part of the district, where numerous buildings were destroyed or severely damaged. To facilitate the analysis of the results, a thematic map was created to illustrate the location and condition of the classified buildings. This map was used to visualise the data and improve understanding of the extent of the damage.
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