Remote sensing image recovery via enhanced residual learning and dual-luminance scheme

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摘要

Low-quality (LQ) images will seriously affect the performance of the information processing system in the field of remote sensing. To recover a high-quality (HQ) remote sensing image from the LQ version, the remote sensing image recovery (RSIR) methods are widely studied. In this paper, we propose a novel enhanced residual convolutional neural network (ERCNN) with dual-luminance scheme (DLS) for RSIR. Our network mainly focuses on learning the residual features to better deal with the high-frequency recovery. Specifically, ERCNN is mainly constructed by enhanced residual groups (ERGs), and ERG is further constructed by enhanced residual blocks (ERBs). Two strategies are used in ERB: proposing an enhanced feature flow module for improving the flowability of feature information with a reasonable parameter number; utilizing the feature attention module to enhance the ability of distinguish learning across feature maps. Furthermore, we introduce two kinds of reversible transformation layers into our network for a larger receptive field and a lower memory burden. Moreover, we propose DLS to further boost the RSIR ability of ERCNN, leading to the boosting version BERCNN. Experimental results on two typical RSIR problems demonstrate the superiority of our method over other RSIR methods.

论文关键词:Remote sensing image recovery,Deep learning,Enhanced residual group,Enhanced residual block,Dual-luminance scheme

论文评审过程:Received 28 October 2020, Revised 17 February 2021, Accepted 29 March 2021, Available online 31 March 2021, Version of Record 8 April 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.107013