Research on High-Resolution Reconstruction of Marine Environmental Parameters Using Deep Learning Model

Remote. Sens. Pub Date : 2023-07-06 DOI:10.3390/rs15133419
Yaning Hu, Liwen Ma, Yushi Zhang, Zhe Wu, Jiaji Wu, Jinpeng Zhang, Xiaoxiao Zhang
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Abstract

The analysis of marine environmental parameters plays a significant role in various aspects, including sea surface target detection, the monitoring of the marine ecological environment, marine meteorology and disaster forecasting, and the monitoring of internal waves in the ocean. In particular, for sea surface target detection, the accurate and high-resolution input of marine environmental parameters is crucial for multi-scale sea surface modeling and the prediction of sea clutter characteristics. In this paper, based on the low-resolution wind speed, significant wave height, and wave period data provided by ECMWF for the surrounding seas of China (specified latitude and longitude range), a deep learning model based on a residual structure is proposed. By introducing an attention module, the model effectively addresses the poor modeling performance of traditional methods like nearest neighbor interpolation and linear interpolation at the edge positions in the image. Experimental results demonstrate that with the proposed approach, when the spatial resolution of wind speed increases from 0.5° to 0.25°, the results achieve a mean square error (MSE) of 0.713, a peak signal-to-noise ratio (PSNR) of 49.598, and a structural similarity index measure (SSIM) of 0.981. When the spatial resolution of the significant wave height increases from 1° to 0.5°, the results achieve a MSE of 1.319, a PSNR of 46.928, and an SSIM of 0.957. When the spatial resolution of the wave period increases from 1° to 0.5°, the results achieve a MSE of 2.299, a PSNR of 44.515, and an SSIM of 0.940. The proposed method can generate high-resolution marine environmental parameter data for the surrounding seas of China at any given moment, providing data support for subsequent sea surface modeling and for the prediction of sea clutter characteristics.
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基于深度学习模型的海洋环境参数高分辨率重建研究
海洋环境参数分析在海面目标探测、海洋生态环境监测、海洋气象与灾害预报、海洋内波监测等方面发挥着重要作用。特别是在海面目标探测中,准确、高分辨率的海洋环境参数输入对于多尺度海面建模和海杂波特性预测至关重要。本文基于ECMWF提供的中国周边海域(特定经纬度范围)低分辨率风速、有效波高和波周期数据,提出了一种基于残差结构的深度学习模型。该模型通过引入关注模块,有效地解决了传统方法如最近邻插值和线性插值在图像边缘位置建模性能差的问题。实验结果表明,当风速的空间分辨率从0.5°增加到0.25°时,采用该方法得到的结果均方误差(MSE)为0.713,峰值信噪比(PSNR)为49.598,结构相似度指数(SSIM)为0.981。当有效波高的空间分辨率从1°增加到0.5°时,MSE为1.319,PSNR为46.928,SSIM为0.957。当波周期的空间分辨率从1°增加到0.5°时,MSE为2.299,PSNR为44.515,SSIM为0.940。该方法可生成中国周边海域任意时刻的高分辨率海洋环境参数数据,为后续海面建模和海杂波特性预测提供数据支持。
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