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Deep learning for ocean remote sensing: an application of convolutional neural networks for super-resolution on satellite-derived SST data

机译:海洋遥感深度学习:卷积神经网络在卫星衍生SST数据超分辨率中的应用

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摘要

In this paper, we propose to address the downscaling of ocean remote sensing data using image super-resolution models based on deep learning, and more particularly Convolutional Neural Networks (CNNs). The goal of this study, for which we focus on satellite-derived Sea Surface Temperature (SST) data, is to evaluate the efficiency and the relevance of deep learning architectures applied to oceanographic remote sensing data. By using a CNN architecture, namely SRCNN (Super Resolution CNN), on a large-scale dataset of SST fields, we show that it allows a considerable gain in terms of PSNR compared to classical downscaling techniques. These results point out the relevance of deep learning models specifically trained for ocean remote sensing data and advocate for other applications to the reconstruction of high-resolution sea surface geophysical fields from multi-sensor satellite observations.
机译:在本文中,我们建议使用基于深度学习的图像超分辨率模型(尤其是卷积神经网络(CNN))解决海洋遥感数据的缩减问题。这项研究的目标是评估源自卫星的海面温度(SST)数据,旨在评估应用于海洋遥感数据的深度学习架构的效率和相关性。通过在大型SST字段数据集上使用CNN体系结构,即SRCNN(超分辨率CNN),我们证明与传统的降尺度技术相比,它在PSNR方面具有可观的增益。这些结果指出了专门针对海洋遥感数据训练的深度学习模型的相关性,并提倡将其用于从多传感器卫星观测中重建高分辨率海表地球物理场的其他应用。

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