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River Area Segmentation Using Sentinel-1 SAR Imagery with Deep-Learning Approach

creativeworkseries.issn1898-1135
dc.contributor.authorDewi, Ni Putu Karisma
dc.contributor.authorSuputra, Putu Hendra
dc.contributor.authorParamartha, A.A. Gede Yudhi
dc.contributor.authorDewi, Luh Joni Erawati
dc.contributor.authorVarnakovida, Pariwate
dc.contributor.authorAryanto, Kadek Yota Ernanda
dc.date.available2025-07-30T09:23:54Z
dc.date.issued2025
dc.description.abstractRiver segmentation is important in delivering essential information for environmental analytics such as water management, flood/disaster management, observations of climate change, or human activities. Advances in remote-sensing technology have provided more complex features that limit the traditional approaches’ effectiveness. This work uses deep-learning-based models to enhance river extractions from satellite imagery. With Resnet-50 as the backbone network, CNN U-Net and DeepLabv3+ were utilized to perform the river segmentation of the Sentinel-1 C-Band synthetic aperture radar (SAR) imagery. The SAR data was selected due to its capability to capture surface details regardless of weather conditions, with VV+VH band polarizations being employed to improve water surface reflectivity. A total of 1080 images were utilized to train and test the models. The models’ performance was measured using the Dice coefficient. The CNN U-Net architecture achieved an accuracy of 0.94, while DeepLabv3+ attained an accuracy of 0.92. Although DeepLabv3+ showed more sta-bility during the training and performed better on wider rivers, CNN U-Net excelled at identifying narrow rivers. In conclusion, a river-segmentation model was conducted using Sentinel-1 C-Band SAR data, with CNN U-Net outperforming DeepLabv3+; this enabled detailed river mapping for irrigation- and flood-monitoring applications – particularly in cloud-prone tropical regions.en
dc.description.placeOfPublicationKraków
dc.description.versionwersja wydawnicza
dc.identifier.doihttps://doi.org/10.7494/geom.2025.19.4.39
dc.identifier.eissn2300-7095
dc.identifier.issn1898-1135
dc.identifier.urihttps://repo.agh.edu.pl/handle/AGH/114022
dc.language.isoeng
dc.publisherWydawnictwa AGH
dc.relation.ispartofGeomatics and Environmental Engineering
dc.rightsAttribution 4.0 International
dc.rights.accessotwarty dostęp
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/legalcode
dc.subjectriveren
dc.subjectsegmentationen
dc.subjectsatellite imageryen
dc.subjectremote sensingen
dc.subjectdeep learningen
dc.subjectCNN U-Neten
dc.subjectDeepLabv3+en
dc.titleRiver Area Segmentation Using Sentinel-1 SAR Imagery with Deep-Learning Approachpl
dc.title.relatedGeomatics and Environmental Engineeringen
dc.typeartykuł
dspace.entity.typePublication
publicationissue.issueNumberNo. 4
publicationissue.paginationpp. 39-63
publicationvolume.volumeNumberVol. 19
relation.isJournalIssueOfPublication19b5965b-7989-4bc4-adb7-49a2930b1fcd
relation.isJournalIssueOfPublication.latestForDiscovery19b5965b-7989-4bc4-adb7-49a2930b1fcd
relation.isJournalOfPublication102998b2-3fd0-4247-98bf-973d6a9ba2d9

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