DeepEddy: A simple deep architecture for mesoscale oceanic eddy detection in SAR images

Dongmei Huang, Yanling Du, Qi He, Wei Song, A. Liotta
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引用次数: 27

Abstract

Automatic detection of mesoscale oceanic eddies is in great demand to monitor their dynamics which play a significant role in ocean current circulation and marine climate change. Traditional methods of eddies detection using remotely sensed data are usually based on physical parameters, geometrics, handcrafted features or expert knowledge, they face a great challenge in accuracy and efficiency due to the high variability of oceanic eddies and our limited understanding of their physical process, especially for rich and large remotely sensed data. In this paper, we propose a simple deep architecture DeepEddy to detect oceanic eddies automatically and be free of expert knowledge. DeepEddy can learn high-level and invariant features of oceanic eddies hierarchically. It is designed with two principal component analysis (PCA) convolutional layers for eddies feature learning, a binary hashing layer for non-linear transformation, a feature pooling layer using block-wise histograms and spatial pyramid pooling to resolve the complicated structures and poses of oceanic eddies, and a classifier for the final eddies identification. We verify the accuracy of the architecture with comprehensive experiments on high spatial resolution Synthetic Aperture Radar (SAR) images. We achieve the state-of-the-art accuracy of 96.68%.
DeepEddy:用于SAR图像中尺度海洋涡探测的简单深层架构
海洋中尺度涡旋在海流环流和海洋气候变化中起着重要的作用,对其动态监测有很大的需求。传统的基于遥感数据的涡流检测方法通常基于物理参数、几何、手工特征或专家知识,由于海洋涡流的高变异性和我们对其物理过程的了解有限,特别是对于丰富和大量的遥感数据,其准确性和效率面临着很大的挑战。在本文中,我们提出了一个简单的深度架构DeepEddy来自动检测海洋涡旋,并且不需要专家知识。DeepEddy可以分层学习海洋涡旋的高级不变特征。它设计了两个主成分分析(PCA)卷积层用于漩涡特征学习,一个二元哈希层用于非线性变换,一个使用块直方图和空间金字塔池化的特征池化层用于解决海洋漩涡的复杂结构和姿态,以及一个用于最终漩涡识别的分类器。通过高空间分辨率合成孔径雷达(SAR)图像的综合实验验证了该结构的准确性。我们达到了96.68%的准确率。
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