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Super-Resolution Network for General Static Degradation Model

机译:一般静态劣化模型的超分辨率网络

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Recent research on single image super-resolution (SISR) has made some progress. However, most previous SISR methods simply assume that a low-resolution (LR) image is bicubicly downsampled from a high-resolution (HR) image. when the LR images don't follow this assumption, these previous methods will generate poor HR images that still retain the blur and noise information. To solve this problem, we propose the super-resolution network for general static degradation model (SR-GSD). Specifically, we propose degradation factors proposal Network (DFPN) which can automatically identify blur kernel and noise level, and furthermore, we utilize predicted degradation factors and the LR images to reconstruct the HR images in a high-resolution reconstruction network (HRN). Moreover, to simplify the training process, we unify the two-stages steps into a neural network and jointly optimize it through a multi-task loss function. Extensive experiments show that our SR-GSD can achieve satisfactory results on the general static degradation model.
机译:最近关于单图像超分辨率(SISR)的研究取得了一些进展。然而,大多数先前的SISR方法只是假设低分辨率(LR)图像是从高分辨率(HR)图像的双层采样的。当LR图像不遵循此假设时,这些先前的方法将产生仍然保留模糊和噪声信息的差的HR图像。为了解决这个问题,我们提出了用于一般静态劣化模型的超分辨率网络(SR-GSD)。具体地,我们提出了可以自动识别模糊核和噪声水平的降级因素提出的提案网络(DFPN),并且我们利用预测的劣化因子和LR图像来重建高分辨率重建网络(HRN)中的HR图像。此外,为了简化培训过程,我们将双级步骤统一到神经网络中,并通过多任务丢失功能共同优化它。广泛的实验表明,我们的SR-GSD可以在一般静态降级模型上实现令人满意的结果。

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