Machine learning methods for the detection of polar lows in satellite mosaics: major issues and their solutions
Mikhail Krinitskiy, Polina Verezemskaya, Svyatoslav Elizarov, Sergey, Gulev

TL;DR
This paper presents a deep learning approach for detecting polar lows in satellite data, addressing challenges like scale filtering, class imbalance, and noise, to improve identification accuracy of these small atmospheric vortices.
Contribution
The study introduces a novel deep learning method tailored for satellite data that tackles key issues such as scale filtering and class imbalance in polar low detection.
Findings
Effective detection of polar lows demonstrated in satellite mosaics.
Addresses scale filtering and class imbalance challenges.
Proposes solutions for improving deep learning detection accuracy.
Abstract
Polar mesocyclones (PMCs) and their intense subclass polar lows (PLs) are relatively small atmospheric vortices that form mostly over the ocean in high latitudes. PLs can strongly influence deep ocean water formation since they are associated with strong surface winds and heat fluxes. Detection and tracking of PLs are crucial for understanding the climatological dynamics of PLs and for the analysis of their impacts on other components of the climatic system. At the same time, visual tracking of PLs is a highly time-consuming procedure that requires expert knowledge and extensive examination of source data. There are known procedures involving deep convolutional neural networks (DCNNs) for the detection of large-scale atmospheric phenomena in reanalysis data that demonstrate a high quality of detection. However, one cannot apply these procedures to satellite data directly since, unlike…
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