TL;DR
This paper introduces the use of the Mathews correlation coefficient for early stopping and an improved distance map loss function to enhance glacier calving front segmentation in SAR images, addressing class imbalance challenges.
Contribution
It proposes novel methods using MCC for early stopping and an improved loss function, significantly boosting segmentation accuracy in imbalanced SAR imagery.
Findings
MCC-based early stopping improves dice coefficient by 15%.
The modified distance map loss adds an additional 2% performance gain.
Methods effectively handle extreme class imbalance in glacier segmentation.
Abstract
The vast majority of the outlet glaciers and ice streams of the polar ice sheets end in the ocean. Ice mass loss via calving of the glaciers into the ocean has increased over the last few decades. Information on the temporal variability of the calving front position provides fundamental information on the state of the glacier and ice stream, which can be exploited as calibration and validation data to enhance ice dynamics modeling. To identify the calving front position automatically, deep neural network-based semantic segmentation pipelines can be used to delineate the acquired SAR imagery. However, the extreme class imbalance is highly challenging for the accurate calving front segmentation in these images. Therefore, we propose the use of the Mathews correlation coefficient (MCC) as an early stopping criterion because of its symmetrical properties and its invariance towards class…
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Taxonomy
MethodsEarly Stopping
