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A Novel Two-stage Residual Learning Based Convolutional Neural Network for Image Super Resolution

机译:一种基于两阶段残差学习的卷积神经网络的图像超分辨率

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摘要

Image super resolution has gained a lot of attention due to its applications in different fields of image processing. It is used to produce high-resolution images from low-resolution input. Because of the excellent learning capability of convolution neural networks, these networks are able to learn complex spatial structures for image super-resolution. In this paper, two different architectures have been proposed for image super resolution. The first architecture is Dual Subpixel Layer Convolution Neural Network (DSL-CNN), which stacks two subpixel CNN architectures to enhance model depth for better representational capability. Two stages provide an effective upscaling factor of 4. In the second architecture, named as Residue based Dual Subpixel Layer Convolution Neural Network (RDSL-CNN), two-stage residual learning has been introduced which effectively sustains the high frequency details and provides superior results than the previous state-of-the-art methods. The performance of the two architectures has been evaluated on various image datasets, and compared with other state-of-the-art methods.
机译:图像超分辨率由于其在图像处理的不同领域中的应用而倍受关注。它用于从低分辨率输入生成高分辨率图像。由于卷积神经网络具有出色的学习能力,因此这些网络能够学习复杂的空间结构以实现图像超分辨率。在本文中,提出了两种不同的体系结构用于图像超分辨率。第一种架构是双子像素层卷积神经网络(DSL-CNN),它堆叠了两个子像素CNN架构以增强模型深度以获得更好的表示能力。两个阶段可提供有效的4升频系数。在第二种架构中,称为基于残差的双子像素层卷积神经网络(RDSL-CNN),引入了两阶段残差学习,可有效维持高频细节并提供出色的结果。比以前最先进的方法。已经在各种图像数据集上评估了两种体系结构的性能,并将其与其他最新方法进行了比较。

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