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Image Super-Resolution via Progressive Cascading Residual Network

机译:通过级联残差网络的图像超分辨率

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The problem of enhancing the resolution of a single low-resolution image has been popularly addressed by recent deep learning techniques. However, many deep learning approaches still fail to deal with extreme super-resolution scenarios because of the instability of training. In this paper, we address this issue by adapting a progressive learning scheme to the deep convolutional neural network. In detail, the overall training proceeds in multiple stages so that the model gradually increases the output image resolution. In our experiments, we show that this property yields a large performance gain compared to the non-progressive learning methods.
机译:最近的深度学习技术已经普遍解决了增强单个低分辨率图像的分辨率的问题。然而,由于训练的不稳定,许多深度学习方法仍然无法应对极端的超分辨率情况。在本文中,我们通过将渐进式学习方案应用于深度卷积神经网络来解决此问题。详细地说,整体训练分多个阶段进行,因此该模型逐渐提高了输出图像的分辨率。在我们的实验中,我们表明,与非渐进式学习方法相比,该属性可产生较大的性能提升。

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