TY - GEN
T1 - Uncertainty-aware Unsupervised Machine Learning to Draw Coastline
AU - Karmakar, Chandrabali
AU - Gottschling, Nina Maria
AU - Camero, Andres
AU - Datcu, Mihai
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Automatic drawing of coastlines with satellite imagery is a crucial factor in detecting coastline shifts due to global climatic changes. However, unavailability of labelled information poses a challenge. We propose an explainable unsupervised machine learning model to automatically draw coastlines in the Baltic sea area to create a 'pre-labelled' dataset, which clearly delineates the boundary pixels between sea and land. Model uncertainty is computed for each pixel and communicated to the domain experts for verification. The domain expert rectifies any error made by model with an interactive tool for human-ML interaction. Initially, we used only Sentinel-2 imagery which had cloud-related issues, later, we have proposed an uncertainty-based approach to fuse Synthetic Aperture Radar images with Sentinel-2 images.The final results show greater accuracy and less uncertainty. An user-interface tool is also presented to validate the segmentation results and integrate human expert's knowledge.
AB - Automatic drawing of coastlines with satellite imagery is a crucial factor in detecting coastline shifts due to global climatic changes. However, unavailability of labelled information poses a challenge. We propose an explainable unsupervised machine learning model to automatically draw coastlines in the Baltic sea area to create a 'pre-labelled' dataset, which clearly delineates the boundary pixels between sea and land. Model uncertainty is computed for each pixel and communicated to the domain experts for verification. The domain expert rectifies any error made by model with an interactive tool for human-ML interaction. Initially, we used only Sentinel-2 imagery which had cloud-related issues, later, we have proposed an uncertainty-based approach to fuse Synthetic Aperture Radar images with Sentinel-2 images.The final results show greater accuracy and less uncertainty. An user-interface tool is also presented to validate the segmentation results and integrate human expert's knowledge.
KW - Domain expert
KW - Explainable
KW - Human-ML interaction
KW - Satellite imagery
KW - Uncertainty
KW - Unsupervised ML
UR - https://www.scopus.com/pages/publications/105001918851
U2 - 10.1109/ATOMS60779.2024.10921503
DO - 10.1109/ATOMS60779.2024.10921503
M3 - Conference contribution
AN - SCOPUS:105001918851
T3 - 2024 IEEE Conference on Advanced Topics on Measurement and Simulation, ATOMS 2024
SP - 27
EP - 30
BT - 2024 IEEE Conference on Advanced Topics on Measurement and Simulation, ATOMS 2024
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2024 IEEE Conference on Advanced Topics on Measurement and Simulation, ATOMS 2024
Y2 - 28 August 2024 through 30 August 2024
ER -