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首页> 外文期刊>Journal of electronic imaging >Realistic single-image super-resolution using autoencoding adversarial networks
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Realistic single-image super-resolution using autoencoding adversarial networks

机译:使用自动编码对抗网络实现逼真的单图像超分辨率

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摘要

The accuracy and efficiency of single-image super-resolution (SR) using techniques based on convolutional neural networks have recently shown much improvement. However, most of the existing algorithms aim at improving the peak signal-to-noise ratio by minimizing the mean squared error between the ground-truth images and the generated SR images. This leads to a lack of high-frequency information and nonconformance with the perception of human eyes. To reconstruct realistic natural images in SR with large up-sampling factors, we combine the benefits of some recent approaches and propose a method based on autoencoding adversarial networks. The proposed architecture includes a generator, which is a symmetric encode-decode network used to extract feature maps and recover high-resolution images, and a conditional discriminator, which is used to determine whether the generated image is from the real distribution or not. In addition, we extract high-level features from a pretrained network to optimize the perceptual loss and make the output more precise. Compared with several state-of-the-art methods, our proposed method shows outstanding performance in recovering fine texture details. The mean opinion score shows that our method yields results that are more satisfactory to human perception than the other methods under comparison. (C) 2018 SPIE and IS&T
机译:使用基于卷积神经网络的技术的单图像超分辨率(SR)的准确性和效率最近已显示出很大的进步。然而,大多数现有算法旨在通过最小化真实图像与生成的SR图像之间的均方误差来提高峰值信噪比。这导致缺乏高频信息,并且与人眼的感知不一致。为了用较大的上采样因子在SR中重建逼真的自然图像,我们结合了一些最新方法的优点,并提出了一种基于自动编码对抗网络的方法。所提出的体系结构包括生成器,其是用于提取特征图并恢复高分辨率图像的对称编码-解码网络,以及条件鉴别器,其用于确定所生成的图像是否来自真实分布。此外,我们从预先训练的网络中提取高级功能,以优化感知损失并提高输出的精确度。与几种最新方法相比,我们提出的方法在恢复精细纹理细节方面表现出出色的性能。平均意见得分表明,与其他比较方法相比,我们的方法所产生的结果对人类感知的满意度更高。 (C)2018 SPIE和IS&T

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