• Optics and Precision Engineering
  • Vol. 30, Issue 12, 1487 (2022)
Mingkun GENG1,2, Fanlu WU1,3, and Dong WANG1,*
Author Affiliations
  • 1Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun30033, China
  • 2University of Chinese Academy of Sciences, Beijing100049, China
  • 3Key Laboratory of Lunar and Deep Space Exploration, Chinese Academy of Sciences, Beijing100101, China
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    DOI: 10.37188/OPE.20223012.1487 Cite this Article
    Mingkun GENG, Fanlu WU, Dong WANG. Lightweight Mars remote sensing image super-resolution reconstruction network[J]. Optics and Precision Engineering, 2022, 30(12): 1487 Copy Citation Text show less

    Abstract

    A lightweight Laplacian pyramid image super-resolution reconstruction convolution neural network based on deep Laplacian pyramid networks (LapSRNs) is proposed to accommodate the numerous parameters used in super-resolution reconstruction methods based on deep learning. First, shallow features are embedded from the input low resolution image (LR) input. Subsequently, using recursive blocks that allow parameter sharing and contain shared-source skip connections, deep features are extracted from the shallow features. Additionally, residual image (RI) containing high-frequency information is inferred. Next, the RI and input LR are upsampled via a transposed convolutional layer and added pixel by pixel to obtain a super-resolution image. The total number of parameters used in this method is only 3.98% of that used in the LapSRN for three scales, and the peak signal to noise ratio index increases by 0.031 3 and 0.116 7 dB under 4 times and 8 times super-resolutions, respectively. The proposed method reduces the number of parameters by 81.6%, 90.8%, and 88.8% under 2 times, 4 times, and 8 times resolutions, while the super-resolution effect is maintained.
    Mingkun GENG, Fanlu WU, Dong WANG. Lightweight Mars remote sensing image super-resolution reconstruction network[J]. Optics and Precision Engineering, 2022, 30(12): 1487
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