Improved SRGAN model

Cong Zhu, Fei Wang, Sheng Liang, Keke Liu
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Abstract

Image super-resolution reconstruction is an ill-posed problem, as a low-resolution image can correspond to multiple high-resolution images. The models SRCNN and SRDenseNet produce high-resolution images using the mean square error (MSE) loss function, which results in blurry images that are the average of multiple high-quality images. However, the GAN model is capable of reconstructing a more realistic distribution of high-quality images. In this paper, we propose modifications to the SRGAN model by utilizing L1 norm loss for the discriminator's loss function, resulting in a more stable model. We also use VGG16 features for perceptual loss instead of VGG19, which produces better results. The content loss is calculated by weighting both the VGG loss and MSE loss, achieving a better balance between PSNR and human perception.
改进的SRGAN模型
图像超分辨率重构是一个不适定问题,因为一幅低分辨率图像可以对应多幅高分辨率图像。SRCNN和SRDenseNet模型使用均方误差(MSE)损失函数生成高分辨率图像,这导致图像模糊,这是多个高质量图像的平均值。然而,GAN模型能够重建更真实的高质量图像分布。在本文中,我们提出了对SRGAN模型的修改,利用L1范数损失作为鉴别器的损失函数,从而使模型更稳定。我们还使用了VGG16特征来代替VGG19,它产生了更好的效果。通过对VGG损失和MSE损失进行加权来计算内容损失,从而在PSNR和人类感知之间实现更好的平衡。
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