论文标题

用于检测卫星马赛克中极性低点的机器学习方法:主要问题及其解决方案

Machine learning methods for the detection of polar lows in satellite mosaics: major issues and their solutions

论文作者

Krinitskiy, Mikhail, Verezemskaya, Polina, Elizarov, Svyatoslav, Gulev, Sergey

论文摘要

极性中clones(PMC)及其强烈的亚类极低(PLS)是相对较小的大气涡旋,主要在高纬度地区形成海洋。 PL可以强烈影响深海水的形成,因为它们与强的表面风和热通量有关。 PL的检测和跟踪对于理解PL的气候动态以及分析其对气候系统其他组成部分的影响至关重要。同时,PLS的视觉跟踪是一种高度耗时的程序,需要专家知识和对源数据的广泛检查。 在重新分析数据中,有许多涉及深卷卷神经网络(DCNN)检测大气现象的已知程序。但是,人们不能将这些程序直接应用于卫星数据,因为与Reanalyses不同,卫星产品注册了所有大气涡旋的所有尺度。众所周知,DCNN最初是设计为规模不变的。这导致了过滤检测现象规模的问题。还有其他问题要解决,例如卫星数据的低信噪比和低平衡的负(无PLS)和正面(在卫星数据集中呈现PL)类别的不平衡数量。 在我们的研究中,我们提出了一种深度学习方法,以检测遥感数据中的PL和PMC,该方法解决了类不平衡和规模过滤问题。我们还概述了针对其他问题的潜在解决方案,并有望改进提出的方法。

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 reanalyses, satellite products register all the scales of atmospheric vortices. It is also known that DCNNs were originally designed to be scale-invariant. This leads to the problem of filtering the scale of detected phenomena. There are other problems to be solved, such as a low signal-to-noise ratio of satellite data and an unbalanced number of negative (without PLs) and positive (where a PL is presented) classes in a satellite dataset. In our study, we propose a deep learning approach for the detection of PLs and PMCs in remote sensing data, which addresses class imbalance and scale filtering problems. We also outline potential solutions for other problems, along with promising improvements to the presented approach.

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