Segmenting Synthetic Aperture Radar (SAR) images is crucial for many remote sensing applications, particularly water body detection. However, deep learning-based segmenta- tion models often face challenges related to convergence speed and stability, mainly due to the complex statistical distribution of this type of data. In this study, we evaluate the impact of mode normalization on two widely used semantic segmentation models, U-Net and SegNet. Specifically, we integrate mode normalization, to reduce convergence time while maintaining the performance of the baseline models. Experimental results demonstrate that mode normalization significantly accelerates convergence. Furthermore, cross-validation results indicate that normalized models exhibit increased stability in different zones. These findings highlight the effectiveness of normalization in improving computational efficiency and generalization in SAR image segmentation.

U-NetMN and SegNetMN: Modified U-Net and SegNet models for bimodal SAR image segmentation

Franco Alberto Cardillo;
2025

Abstract

Segmenting Synthetic Aperture Radar (SAR) images is crucial for many remote sensing applications, particularly water body detection. However, deep learning-based segmenta- tion models often face challenges related to convergence speed and stability, mainly due to the complex statistical distribution of this type of data. In this study, we evaluate the impact of mode normalization on two widely used semantic segmentation models, U-Net and SegNet. Specifically, we integrate mode normalization, to reduce convergence time while maintaining the performance of the baseline models. Experimental results demonstrate that mode normalization significantly accelerates convergence. Furthermore, cross-validation results indicate that normalized models exhibit increased stability in different zones. These findings highlight the effectiveness of normalization in improving computational efficiency and generalization in SAR image segmentation.
Campo DC Valore Lingua
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC en
dc.authority.people Marwane Kzadri en
dc.authority.people Franco Alberto Cardillo en
dc.authority.people Nanée Chahinian en
dc.authority.people Carole Delenne en
dc.authority.people Renaud Hostache en
dc.authority.people Jamal Riffi en
dc.authority.project corda_____he::86c21b1aa82d5bdc53411947d7ebd9f8 en
dc.collection.id.s 71c7200a-7c5f-4e83-8d57-d3d2ba88f40d *
dc.collection.name 04.01 Contributo in Atti di convegno *
dc.contributor.appartenenza Istituto di linguistica computazionale "Antonio Zampolli" - ILC *
dc.contributor.appartenenza.mi 918 *
dc.contributor.area Non assegn *
dc.date.firstsubmission 2026/03/04 10:03:17 *
dc.date.issued 2025 -
dc.date.submission 2026/03/04 10:03:17 *
dc.description.abstracteng Segmenting Synthetic Aperture Radar (SAR) images is crucial for many remote sensing applications, particularly water body detection. However, deep learning-based segmenta- tion models often face challenges related to convergence speed and stability, mainly due to the complex statistical distribution of this type of data. In this study, we evaluate the impact of mode normalization on two widely used semantic segmentation models, U-Net and SegNet. Specifically, we integrate mode normalization, to reduce convergence time while maintaining the performance of the baseline models. Experimental results demonstrate that mode normalization significantly accelerates convergence. Furthermore, cross-validation results indicate that normalized models exhibit increased stability in different zones. These findings highlight the effectiveness of normalization in improving computational efficiency and generalization in SAR image segmentation. -
dc.description.allpeople Kzadri, Marwane; Cardillo, Franco Alberto; Chahinian, Nanée; Delenne, Carole; Hostache, Renaud; Riffi, Jamal -
dc.description.allpeopleoriginal Marwane Kzadri, Franco Alberto Cardillo, Nanée Chahinian, Carole Delenne, Renaud Hostache, Jamal Riffi en
dc.description.fulltext none en
dc.description.international si en
dc.description.numberofauthors 6 -
dc.identifier.doi 10.1109/ICCSC66714.2025.11135135 en
dc.identifier.isbn 979-8-3315-6529-9 en
dc.identifier.source manual *
dc.identifier.uri https://hdl.handle.net/20.500.14243/570922 -
dc.identifier.url https://ieeexplore.ieee.org/document/11135135 en
dc.language.iso eng en
dc.relation.conferencename 2025 International Conference on Circuit, Systems and Communication (ICCSC) en
dc.relation.ispartofbook Proceedings of the 2025 International Conference on Circuit, Systems and Communication (ICCSC) en
dc.relation.numberofpages 6 en
dc.relation.projectAcronym STARWARS en
dc.relation.projectAwardNumber 101086252 en
dc.relation.projectAwardTitle STormwAteR and WastewAteR networkS heterogeneous data AI-driven management en
dc.relation.projectFunderName European Commission en
dc.relation.projectFundingStream Horizon Europe Framework Programme en
dc.subject.keywordseng SAR image segmentation, deep learning, mode normalization, U-Net, SegNet. -
dc.subject.singlekeyword SAR image segmentation *
dc.subject.singlekeyword deep learning *
dc.subject.singlekeyword mode normalization *
dc.subject.singlekeyword U-Net *
dc.subject.singlekeyword SegNet. *
dc.title U-NetMN and SegNetMN: Modified U-Net and SegNet models for bimodal SAR image segmentation en
dc.type.driver info:eu-repo/semantics/conferenceObject -
dc.type.full 04 Contributo in convegno::04.01 Contributo in Atti di convegno it
dc.type.miur 273 -
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iris.unpaywall.doi 10.1109/iccsc66714.2025.11135135 *
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iris.unpaywall.landingpage http://arxiv.org/abs/2506.05444 *
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iris.unpaywall.metadataCallLastModifiedMillisecond 1772683174728 -
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iris.unpaywall.pdfurl https://arxiv.org/pdf/2506.05444 *
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/570922
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