Qi Zhang, Huafeng Wang, Tao Du, Sichen Yang, Yuehai Wang, Zhiqiang Xing, Wenle Bai, Yang Yi
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引用次数: 8
摘要
在本文中,我们考虑了超分辨率重建问题。由于超分辨率重建在医学、遥感监测、刑事侦查等领域有着广泛的应用,这是一个热门的话题。与传统算法相比,目前基于深度学习的超分辨率重建算法大大提高了重建图像的清晰度。现有的超分辨率生成对抗网络(superresolution Using a Generative Adversarial Network, SRGAN)可以有效地恢复图像的纹理细节。然而,实验验证了SRGAN恢复的图像纹理细节不具有鲁棒性。为了获得高频细节更丰富的超分辨率重建图像,改进了网络结构,提出了一种结合小波变换和生成对抗网络的超分辨率重建算法。该算法可以有效地重建具有丰富全局信息和局部纹理细节的高分辨率图像。我们使用PyTorch框架和VOC2012数据集对模型进行训练,并使用Set5、Set14、BSD100和Urban100测试数据集对模型进行测试。
Super-resolution reconstruction algorithms based on fusion of deep learning mechanism and wavelet
In this paper, we consider the problem of super-resolution reconstruction. This is a hot topic because super-resolution reconstruction has a wide range of applications in the medical field, remote sensing monitoring, and criminal investigation. Compared with traditional algorithms, the current super-resolution reconstruction algorithm based on deep learning greatly improves the clarity of reconstructed pictures. Existing work like Super-Resolution Using a Generative Adversarial Network (SRGAN) can effectively restore the texture details of the image. However, experimentally verified that the texture details of the image recovered by the SRGAN are not robust. In order to get super-resolution reconstructed images with richer high-frequency details, we improve the network structure and propose a super-resolution reconstruction algorithm combining wavelet transform and Generative Adversarial Network. The proposed algorithm can efficiently reconstruct high-resolution images with rich global information and local texture details. We have trained our model by PyTorch framework and VOC2012 dataset, and tested it by Set5, Set14, BSD100 and Urban100 test datasets.