Uncertainty-Aware Learning With Label Noise for Glacier Mass Balance Modeling
Codrut-Andrei Diaconu,
Nina Maria Gottschling
Abstract:Glacier mass balance modeling is crucial for understanding the impact of climate change on Earth's freshwater resources and sea-level rise. Recent works have shown the benefit of using Machine Learning and Deep Learning methods to better capture the non-linearities in the system than commonly used temperature-index models. However, when relying on Remote Sensing products for training, the presence of data noise is a challenge for these methods and therefore quantifying the uncertainty becomes essential. In thi… Show more
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