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Publication Additional Information Download
Publication Type
Journal Article
Authorship
Saberi, N., Shaker, M. H., Duguay, C. R., Scott, K. A., and Hüllermeier, E.
Title
Uncertainty Estimation of Lake Ice Cover Maps From a Random Forest Classifier Using MODIS TOA Reflectance Data
Year
2024
Publication Outlet
IEEE Journals & Magazine | IEEE Xplore, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 18, pp. 5919-5927, 2025,
DOI
https://doi.org/10.1109/JSTARS.2024.3518306
Abstract
This article presents a method to improve the usability of lake ice cover (LIC) maps generated from moderate resolution imaging spectroradiometer (MODIS) top-of-atmosphere reflectance data by providing estimates of aleatoric and epistemic uncertainty. We used a random forest (RF) classifier, which has been shown to have superior performance in classifying lake ice, open water, and clouds, to generate daily LIC maps with inherent (aleatoric) and model (epistemic) uncertainties. RF allows for the learning of different hypotheses (trees), producing diverse predictions that can be utilized to quantify aleatoric and epistemic uncertainty. We use a decomposition of Shannon entropy to quantify these uncertainties and apply pixel-based uncertainty estimation. Our results show that using uncertainty values to reject the classification of uncertain pixels significantly improves recall and precision. The method presented herein is under consideration for integration into the processing chain implemented for the production of daily LIC maps as part of the European Space Agency's Climate Change Initiative (CCI+) Lakes project.
Program Affiliations
GWF: Global Water Futures
Project Affiliations
GWF-TSTSW: Transformative Sensor Technologies and Smart Watersheds
Publication Stage
Published
Download Links
https://doi.org/10.1109/JSTARS.2024.3518306
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