Building segmentation in urban areas is essential in fields such as urban planning, disaster response, and population mapping. Yet accurately segmenting buildings in dense urban regions presents challenges due to the large size and high resolution of satellite images. This study investigates the use of a Quanvolutional pre-processing to enhance the capability of the Attention U-Net model in the building segmentation. Specifically, this paper focuses on the urban landscape of Tunis, utilizing Sentinel-1 Synthetic Aperture Radar (SAR) imagery.In this work, Quanvolution was used to extract more informative feature maps that capture essential structural details in radar imagery, proving beneficial for accurate building segmentation. Preliminary results indiceate that proposed methodology achieves comparable test accuracy to the standard Attention U-Net model while significantly reducing network parameters. This result aligns with findings from previous works, confirming that Quan- volution not only maintains model accuracy but also increases computational efficiency. These promising outcomes highlight the potential of quantum-assisted Deep Learning frameworks for large-scale building segmentation in urban environments.

A Quantum-assisted Attention U-Net for Building Segmentation over Tunis using Sentinel-1 Data / Russo, L.; Mauro, F.; Memar, B.; Sebastianelli, A.; Ullo, S. L.; Gamba, P.. - (2025), pp. 1-4. ( 2025 Joint Urban Remote Sensing Event (JURSE) tun ) [10.1109/JURSE60372.2025.11076019].

A Quantum-assisted Attention U-Net for Building Segmentation over Tunis using Sentinel-1 Data

Memar, B.;
2025

Abstract

Building segmentation in urban areas is essential in fields such as urban planning, disaster response, and population mapping. Yet accurately segmenting buildings in dense urban regions presents challenges due to the large size and high resolution of satellite images. This study investigates the use of a Quanvolutional pre-processing to enhance the capability of the Attention U-Net model in the building segmentation. Specifically, this paper focuses on the urban landscape of Tunis, utilizing Sentinel-1 Synthetic Aperture Radar (SAR) imagery.In this work, Quanvolution was used to extract more informative feature maps that capture essential structural details in radar imagery, proving beneficial for accurate building segmentation. Preliminary results indiceate that proposed methodology achieves comparable test accuracy to the standard Attention U-Net model while significantly reducing network parameters. This result aligns with findings from previous works, confirming that Quan- volution not only maintains model accuracy but also increases computational efficiency. These promising outcomes highlight the potential of quantum-assisted Deep Learning frameworks for large-scale building segmentation in urban environments.
2025
2025 Joint Urban Remote Sensing Event (JURSE)
CNN; deep learning; neural network; quantum; quanvolution; SAR; Sentinel-1; U-Net
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
A Quantum-assisted Attention U-Net for Building Segmentation over Tunis using Sentinel-1 Data / Russo, L.; Mauro, F.; Memar, B.; Sebastianelli, A.; Ullo, S. L.; Gamba, P.. - (2025), pp. 1-4. ( 2025 Joint Urban Remote Sensing Event (JURSE) tun ) [10.1109/JURSE60372.2025.11076019].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1755734
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