• Optics and Precision Engineering
  • Vol. 31, Issue 15, 2273 (2023)
Qiqi KOU1,*, Chao LI2, Deqiang CHENG2, Liangliang CHEN2..., Haohui MA2 and Jianying ZHANG2|Show fewer author(s)
Author Affiliations
  • 1School of Computer Science and Technology, China University of Mining and Technology, Xuzhou226, China
  • 2School of Information and Control Engineering, China University of Mining and Technology, Xuzhou1116, China
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    DOI: 10.37188/OPE.20233115.2273 Cite this Article
    Qiqi KOU, Chao LI, Deqiang CHENG, Liangliang CHEN, Haohui MA, Jianying ZHANG. Image super-resolution reconstruction based on attention and wide-activated dense residual network[J]. Optics and Precision Engineering, 2023, 31(15): 2273 Copy Citation Text show less

    Abstract

    To address the problem of the blurring of the texture details of reconstructed images due to the insufficient utilization of global and local high- and low-frequency spatial information, this paper proposes an image super-resolution reconstruction model based on attention and a wide-activated dense residual network. First, four parallel convolution kernels with different scales are used to fully extract the low-frequency features of the image as the prior information for spatial feature transformation. Second, a wide-activated residual block fused with attention is constructed in the deep feature mapping module, and the low-frequency prior information is used to guide the extraction of the high-frequency features. In addition, the wide-activated residual block extracts deeper feature maps by expanding the number of feature channels before the activation function. As a result, the constructed global and local residual connections not only strengthen the forward propagation of the residual blocks and network features, but also enrich the diversity of the extracted features without increasing the number of parameters. Finally, the feature map is upsampled and reconstructed to obtain a clear high-resolution image. the experimental results show that compared with the LatticeNet model, the peak signal-to-noise ratio of the proposed algorithm is improved by 0.14 dB, and the structural similarity is improved by 0.001 at 4× super resolution on the BSD100 dataset. In addition, the local texture details of the reconstructed image are also clearer in subjective visualization.
    Qiqi KOU, Chao LI, Deqiang CHENG, Liangliang CHEN, Haohui MA, Jianying ZHANG. Image super-resolution reconstruction based on attention and wide-activated dense residual network[J]. Optics and Precision Engineering, 2023, 31(15): 2273
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