Automatic Detection of Ocean Eddy based on Deep Learning Technique with Attention Mechanism

Shaik John Saida, S. Ari
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引用次数: 3

Abstract

Ocean eddies are a common occurrence in ocean water circulation. They have an enormous impact on the marine ecosystem. One of the most active study topics in physical oceanography is ocean eddy detection. Although using deep learning algorithms to detect eddies is a recent trend, it is still in its infancy. In this paper, an attention mechanism-based ocean eddy detection approach using deep learning is proposed. Attention mechanism has spatial and channel attention modules that are cascaded to convolution blocks-based encoder model to simulate spatial and channel semantic interdependencies. In the spatial attention module, the feature at each point is aggregated selectively by the sum of the features at all positions. The channel attention module aggregates related data from all channel maps to selectively highlight interdependent channel maps. The original feature map and the feature map obtained through the attention mechanism are appended to enhance the feature representation further, resulting in more accurate segmentation results. The findings of the experiments show that adopting an attention-based deep framework improves eddy recognition accuracy significantly.
基于注意机制的深度学习技术的海洋涡旋自动检测
海洋涡旋是海水循环中常见的现象。它们对海洋生态系统有着巨大的影响。海洋涡旋探测是物理海洋学中最活跃的研究课题之一。尽管使用深度学习算法来检测涡流是最近的趋势,但它仍处于起步阶段。本文提出了一种基于注意机制的深度学习海洋涡流检测方法。注意机制有空间和通道注意模块,它们级联到基于卷积块的编码器模型来模拟空间和通道语义的相互依赖。在空间注意模块中,每个点的特征由所有位置的特征的和选择性地聚合。通道注意模块聚合所有通道映射的相关数据,选择性地突出相互依赖的通道映射。将原有的特征图和通过注意机制得到的特征图进行附加,进一步增强特征表示,得到更准确的分割结果。实验结果表明,采用基于注意力的深度框架可以显著提高涡流识别的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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