Multi-level Feature Extraction and Edge Reconstruction Fused Generative Adversarial Networks for Image Super Resolution

Q3 Arts and Humanities
Icon Pub Date : 2023-03-01 DOI:10.1109/ICNLP58431.2023.00027
Yinghua Li, Yue Liu, Y. Liu, Yangge Qiao, Jinglu He
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引用次数: 0

Abstract

At present, the image super-resolution method based on convolutional neural network has achieved a very high PSNR, but the high-frequency information obtained by using the mean square error as the loss function is not sufficient, and when the scale factor is large, the detail texture of the restored image is blurred, and it is not completely consistent with the human visual perception. Therefore, this paper proposes an image super-resolution algorithm based on GAN. We modify the residual block of the original SRGAN generator network into three modules: Edge-Reconstruction network, Low-Frequency feature (LF-feature) extraction module and Residual network. The Edge-Reconstruction network reconstructs the edge of SR image, and the LF-feature extraction module extracts the low-frequency information of the image. After that, the two parts of information are fused and transmitted to Residual network to extract the high-frequency information of the image, and then the SR image is reconstructed and enlarged. And use skip connection in the network to increase the network depth. The training results show that our network has better performance in both objective evaluation indicators and subjective vision. Even with a large-scale factor, our network can recover fine texture information.
面向图像超分辨率的多层次特征提取与边缘重建融合生成对抗网络
目前,基于卷积神经网络的图像超分辨率方法虽然取得了很高的PSNR,但利用均方误差作为损失函数获得的高频信息并不充分,而且当比例因子较大时,恢复图像的细节纹理模糊,与人的视觉感知不完全一致。为此,本文提出了一种基于GAN的图像超分辨率算法。我们将原有SRGAN发生器网络的残差块修改为三个模块:边缘重建网络、低频特征提取模块和残差网络。边缘重建网络重建SR图像的边缘,lf特征提取模块提取图像的低频信息。然后将两部分信息融合并传输到残差网络中提取图像的高频信息,再对SR图像进行重构和放大。并在网络中采用跳接方式,增加网络深度。训练结果表明,我们的网络在客观评价指标和主观视觉上都有较好的表现。即使是大规模的因素,我们的网络也能恢复出精细的纹理信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Icon Arts and Humanities-History and Philosophy of Science
CiteScore
0.30
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