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

Journal article


Authors/Editors


Strategic Research Themes


Publication Details

Author listNi Putu Karisma Dewi, Putu Hendra Suputra, A.A. Gede Yudhi Paramartha, Luh Joni Erawati Dewi, Pariwate Varnakovida, Kadek Yota Ernanda Aryanto

Publication year2025

Volume number19

Issue number4

URLhttps://doi.org/10.7494/geom.2025.19.4.39

LanguagesEnglish-United States (EN-US)


View on publisher site


Abstract

River 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 stability 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 irrigationand flood-monitoring applications – particularly in cloud-prone tropical regions.


Keywords

No matching items found.


Last updated on 2025-18-09 at 10:35