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Compression artifacts reduction by improved generative adversarial networks

机译:通过改进的生成对抗性网络减少压缩伪影

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Abstract In this paper, we propose an improved generative adversarial network (GAN) for image compression artifacts reduction task (artifacts reduction by GANs, ARGAN). The lossy compression leads to quite complicated compression artifacts, especially blocking artifacts and ringing effects. To handle this problem, we choose generative adversarial networks as an effective solution to reduce diverse compression artifacts. The structure of “U-NET” style is adopted as the generative network in the GAN. A discriminator network is designed in a convolutional manner to differentiate the restored images from the ground truth distribution. This approach can help improve the performance because the adversarial loss aggressively encourages the output image to be close to the distribution of the ground truth. Our method not only learns an end-to-end mapping from input degraded image to corresponding restored image, but also learns a loss function to train this mapping. Benefit from the improved GANs, we can achieve desired results without hand-engineering the loss functions. The experiments show that our method achieves better performance than the state-of-the-art methods.
机译:摘要在本文中,我们提出了一种改进的生成对冲网络(GaN),用于图像压缩伪影减少任务(由GANS减少的文物减少)。有损压缩导致相当复杂的压缩伪影,尤其是阻塞伪影和振铃效果。为了处理这个问题,我们选择生成的对抗性网络作为减少各种压缩伪影的有效解决方案。 “U-Net”风格的结构被用作GaN中的生成网络。鉴别者网络以卷积方式设计,以区分恢复的图像从地面事实分布。这种方法可以帮助提高性能,因为对抗性丧失激发了输出图像接近地面真理的分布。我们的方法不仅将从输入的劣化图像从输入到相应的恢复图像中的端到端映射,还要了解培训此映射的损失函数。从改进的GAN中受益,我们可以在没有手工工程的情况下实现所需的结果。实验表明,我们的方法比最先进的方法实现了更好的性能。

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