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基于多感受野拉普拉斯生成对抗网络的单幅图像超分辨率重建算法

Single Image Super-Resolution Reconstruction Algorithm with Generative Adversarial Network Based on Multi-Size Convolution and Laplacian Filtering

  • 摘要: 目前深度学习模式下的图像超分辨率重建存在对纹理感知不够精确、重建图像不够真实等问题,为了改善重建图像质量,提出一种基于多感受野拉普拉斯生成对抗网络的单幅图像超分辨率算法.首先,利用多感受野特征提取、可分离拉普拉斯滤波和复合残差密集块构建生成网络,使网络提取更全面的图像信息;其次,利用多维软标签对抗网络,可使生成对抗网络更容易训练且重建图像纹理更加丰富;最后,网络预训练采用L1损失函数和VGG低层特征,使重建图像获取整体特征,训练使用VGG高层特征、Charbonnier损失和生成损失,使重建结果更加精细,纹理更加充分.实验使用Div2k和Flickr2K进行模型训练,使用Set5等数据集进行测试.结果表明,该算法比USRNet等相关算法的网络规模减小40%,感知指数比USRNet平均降低0.76%,图像重建结果具有更多细节且真实性更强.

     

    Abstract: At present,the image super-resolution reconstruction algorithm using deep learning still faces problems such as insufficient texture perception and insufficient realism of the reconstructed image.In order to improve the quality of the reconstructed image,a single image super-resolution reconstruction algorithm with generative adversarial network based on multi-size convolution and Laplacian filtering is proposed.First,multi-size convolution feature extraction,separable Laplacian filtering and composite residual dense block are used to build a generation network which can extract more comprehensive image information.Secondly,multi-dimensional soft labels are utilized to construct the adversarial network,which can train the generative adversarial network easily and reconstruct image texture richly.Finally,the L1 loss function and the VGG low-level features are taken to obtain the overall features in the pre-training stage and the VGG high-level features,Charbonnier loss,and generative loss are used to make the reconstruction result more meticulously during training.Div2k and Flickr2K are chosen for model training,and Set5 and other data sets are used for testing.The experiment results show that the network size of this algorithm is 40%less than USRNet and other related algorithms,and the perceptual index is 0.76%lower than USRNet on average.The reconstruction result has more details and is more authentic.

     

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