Weather Radar Image Superresolution Using a Nonlocal Residual Network

Yuan, Haoxuan and Zeng, Qiangyu and He, Jianxin and Jan, Naeem (2021) Weather Radar Image Superresolution Using a Nonlocal Residual Network. Journal of Mathematics, 2021. pp. 1-11. ISSN 2314-4629

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Abstract

Accurate and high-resolution weather radar images reflecting detailed structure information of radar echo are vital for analysis and forecast of extreme weather. Typically, this is performed by using interpolation schemes, which only use several neighboring data values for computational approximation to get the estimated value regardless of the large-scale context feature of weather radar images. Inspired by the striking performance of the convolutional neural network (CNN) applied in feature extraction and nonlocal self-similarity of weather radar images, we proposed a nonlocal residual network (NLRN) on the basis of CNN. The proposed network mainly consists of several nonlocal residual blocks (NLRB), which combine short skip connection (SSC) and nonlocal operation to train the deep network and capture large-scale context information. In addition, long skip connection (LSC) added in the network avoids learning low-frequency information, making the network focus on high-level features. Extensive experiments of ×2 and ×4 super-resolution reconstruction demonstrate that NLRN achieves superior performance in terms of both quantitative evaluation metrics and visual quality, especially for the reconstruction of the edge and detailed information of the weather radar echo.

Item Type: Article
Subjects: STM Repository > Mathematical Science
Depositing User: Managing Editor
Date Deposited: 07 Apr 2023 05:38
Last Modified: 07 May 2024 04:29
URI: http://classical.goforpromo.com/id/eprint/396

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