Mesoscale Ocean Eddy Detection Using High-Resolution Network

Xirong Lu, Shaoxiang Guo, Meng Zhang, Junyu Dong, Xue'en Chen, Xin Sun
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引用次数: 5

Abstract

Ocean eddies are common phenomena of ocean water movement. They have a significant impact on the physical properties of marine hydrology, marine chemistry and marine biological environment. Current study of ocean eddy detection has already become one of the most active research areas in physical oceanography. Recent trend in eddy detection attempts to employ deep learning methods, but it is still in the early stage. Accordingly, this work takes the advantage of the rapid development of deep learning to improve the current result on ocean eddy detection. We apply the improved and reliable high-resolution representation network to eddy detection and classification from Sea Surface Height (SSH) maps based on semantic segmentation. This high-resolution network can aggregate representations from all the parallel convolutions and repeat the operation of feature fusion. It can therefore maintain and eventually produce high-resolution representations throughout the whole feature extraction process. We then effectively combine the segmentation result with a CascadePSP module and obtain more accurate results than those produced by existing approaches. Our work shows a good performance based on the sea surface height data, which also verifies the application value of deep learning technology in the field of ocean monitoring and data mining.
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基于高分辨率网络的中尺度海洋涡旋探测
海洋涡旋是常见的海水运动现象。它们对海洋水文、海洋化学和海洋生物环境的物理性质有重要影响。目前海洋涡旋探测研究已成为物理海洋学中最活跃的研究领域之一。近年来,在涡流检测领域有尝试采用深度学习方法的趋势,但目前仍处于早期阶段。因此,本工作利用深度学习的快速发展来改进目前海洋涡流检测的结果。我们将改进的、可靠的高分辨率表示网络应用于基于语义分割的海面高度(SSH)图的涡流检测和分类。该高分辨率网络可以聚合所有并行卷积的表示,并重复特征融合操作。因此,它可以在整个特征提取过程中保持并最终产生高分辨率的表示。然后,我们将分割结果与CascadePSP模块有效地结合起来,获得了比现有方法更准确的结果。我们的工作显示了基于海面高度数据的良好性能,这也验证了深度学习技术在海洋监测和数据挖掘领域的应用价值。
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