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Enhancing building extraction from remote sensing images through UNet and transfer learning

Performing accurate extraction of buildings from remote sensing (RS) images is a crucial process with widespread applications in urban planning, disaster management, and urban monitoring. However, this task remains challenging due to the diversity and complexity of building shapes, sizes, and textur...

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Published in:International journal of computers & applications 2023-05, Vol.45 (5), p.413-419
Main Authors: Ait El Asri, Smail, Negabi, Ismail, El Adib, Samir, Raissouni, Naoufal
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Language:English
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description Performing accurate extraction of buildings from remote sensing (RS) images is a crucial process with widespread applications in urban planning, disaster management, and urban monitoring. However, this task remains challenging due to the diversity and complexity of building shapes, sizes, and textures, as well as variations in lighting and weather conditions. These difficulties motivate our research to propose an improved approach for building extraction using UNet and transfer learning to address these challenges. In this work, we tested seven different backbone architectures within the UNet encoder and found that combining UNet with ResNet101 or ResNet152 yielded the best results. Based on these findings, we combined the superior performance of these base models to create a novel architecture, which achieved significant improvements over previous methods. Specifically, our method achieved a 1.33% increase in Intersection over Union (IoU) compared to the baseline UNet model. Furthermore, it demonstrated a superior performance with a 1.21% increase in IoU over UNet-ResNet101 and a 1.60% increase in IoU over UNet-ResNet152. We evaluated our proposed approach on the INRIA Aerial Image dataset and demonstrated its superiority. Our research addresses a critical need for accurate building extraction from RS images and overcomes the challenges posed by diverse building characteristics.
doi_str_mv 10.1080/1206212X.2023.2219117
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source Taylor and Francis Science and Technology Collection
subjects Building extraction
Coders
Disaster management
Image enhancement
Learning
Remote sensing
Remote sensing images
ResNet
transfer learning
UNet
Urban planning
Weather
title Enhancing building extraction from remote sensing images through UNet and transfer learning
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