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Super-Resolution for Noisy Images via Deep Convolutional Neural Network

机译:深度卷积神经网络对噪声图像的超分辨率

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Super-resolution (SR) is an effective approach to enhance image spatial resolution. Although many SR algorithms have been proposed by far, little progress has been made to improve resolution for a noisy image. Conventional approaches always adopt the denoising step before applying the SR method to noisy low-resolution images. However, some high-frequency details lose during the denoising step and cannot be restored by the following SR step. Therefore, motivated by the success of deep learning in different computer vision missions, we propose a novel method named Denoising Super-Resolution Deep Convolutional Network (DSR-DCN), to combine both denoising and SR step in a single deep model. The proposed deep model straightly learns an end-to-end mapping from noisy LR space to the corresponding HR space. To equip the proposed network with the capability of blind denoising, Gaussian noise, with a range of standard deviation instead of constant value, is added to each patch of the LR space during training. Experiment results demonstrate that DSR-DCX achieves superior performance and better visual effects than the conventional approaches.
机译:超分辨率(SR)是提高图像空间分辨率的有效方法。尽管到目前为止已经提出了许多SR算法,但是在提高噪点图像的分辨率方面进展甚微。在将SR方法应用于嘈杂的低分辨率图像之前,常规方法始终采用降噪步骤。但是,某些高频细节会在去噪步骤中丢失,并且无法通过后续的SR步骤恢复。因此,受深度学习在不同计算机视觉任务中取得成功的启发,我们提出了一种称为降噪超分辨率深度卷积网络(DSR-DCN)的新颖方法,将降噪和SR步骤结合在一个深度模型中。提出的深度模型直接学习了从嘈杂的LR空间到相应的HR空间的端到端映射。为了使所提出的网络具有盲降噪功能,在训练过程中,将具有一定标准偏差范围而不是恒定值的高斯噪声添加到LR空间的每个面片中。实验结果表明,DSR-DCX比传统方法具有更高的性能和更好的视觉效果。

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