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首页> 外文期刊>Journal of electronic imaging >Computationally efficient progressive approach for single-image super-resolution using generative adversarial network
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Computationally efficient progressive approach for single-image super-resolution using generative adversarial network

机译:使用生成对抗网络计算单图像超分辨率的计算上高效的渐进方法

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Single-image super-resolution (SISR) refers to reconstructing a high-resolution image from given low-resolution observation. Recently, convolutional neural network (CNN) based SISR methods have achieved remarkable results in terms of peak-signal-to-noise ratio and structural similarity measures. These models use pixel-wise loss functions to optimize their models, which results in blurry images. However, the generative adversarial network (GAN) has the ability to generate visually plausible solutions. The different GAN-based SISR methods obtain perceptually better SR results when compared to that with the existing CNN-based methods. However, the existing GAN-based SISR methods need a large number of training parameters in the architecture to obtain better SR performance, which makes them unsuitable for many real world applications. We propose a computationally efficient enhanced progressive approach for SISR task using GAN, which we referred as E-ProSRGAN. In the proposed method, we introduce a novel design of residual block called enhanced parallel densely connected residual network, which helps to obtain better SR performance with less number of training parameters. The quantitative performance of the proposed E-ProSRNet (i.e., generator network of E-ProSRGAN) model is better for higher upscaling factors x3 and x4 for most of datasets when compared to the same obtained using different CNN-based methods whose trainable parameters are less than 7 M. In the case of upscaling factor x2, E-ProSRNet obtains second highest structural similarity index measure values for Set5 and BSD100 datasets. The proposed E-ProSRGAN model generates SR samples with better high-frequency details and perception measures than that of the other existing GAN-based SISR methods with significant reduction in the number of training parameters for larger upscaling factor. (c) 2021 SPIE and IS&T [DOI: 10.1117/1.JEI.30.2.021003]commentSuperscript/Subscript Available/comment
机译:单图像超分辨率(SISR)是指从给定的低分辨率观察重建高分辨率图像。最近,基于卷积神经网络(CNN)的SISR方法在峰值信噪比和结构相似度测量方面取得了显着的结果。这些模型使用像素 - 明智的损耗功能来优化其模型,从而导致模糊的图像。然而,生成的对抗性网络(GAN)能够产生视觉上可符号的解决方案。与现有基于CNN的方法相比,基于GAN的SISR方法得到了感知的是更好的SR结果。然而,现有的基于GaN的SISR方法需要在架构中需要大量的训练参数来获得更好的SR性能,这使得它们不适合许多真实世界的应用程序。我们为使用GaN提出了一种计算效率的逐步增强的SISR任务逐步方法,我们将其称为电子沃尔格根。在所提出的方法中,我们介绍了一种名为增强型平行密集连接的残余网络的残余块的新颖设计,有助于通过较少数量的训练参数获得更好的SR性能。当使用不同的基于CNN的方法的相同,所提出的E-PROSRNET(即,E-PROSRGAN)模型的定量性能对于大多数数据集比大多数数据集更好,对于大多数数据集比使用不同的基于CNN的方法,其可训练参数较少在升高因子X2的情况下,E-Prosrnet获得Set5和BSD100数据集的第二最高结构相似性指数测量值。所提出的E-PROSRGAN模型产生具有比其他现有GAN的SISR方法更好的高频细节和感知测量的SR样本,具有较大升高因子的训练参数的数量显着降低。 (c)2021个SPIE和IS&T [DOI:10.1117 / 1.JEI.30.2.021003]&注释&上标/下标可用& /评论

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