Research on Residual Learning of Deep CNN for Image Denoising

Feida Gu
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引用次数: 33

Abstract

Image denoising is a classical but still popular research topic. Removing noise from corrupted images is an indispensable step for many practical applications. Deep Learning for image denoising has shown favorable performance. Residual Learning of Deep CNN (DnCNN) is proposed for image denoising, and shows desired performance. In the paper, based on DnCNN, some hyperparameters are adjusted for better performance. In addition, a validation step is added during the training process, which allows us to observe the training process to avoid overfitting. With the validation step during the training process, a novel method of learning rate adjustment is introduced to help train the best model for the network. The results show the adjusted network has a better performance compared to the baseline of DnCNN.
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深度CNN残差学习图像去噪研究
图像去噪是一个经典而又热门的研究课题。在许多实际应用中,从损坏图像中去除噪声是必不可少的步骤。深度学习在图像去噪方面表现出了良好的效果。提出了基于深度CNN残差学习(DnCNN)的图像去噪方法,并取得了良好的效果。本文在DnCNN的基础上,调整了一些超参数以获得更好的性能。此外,在训练过程中增加了一个验证步骤,使我们能够观察训练过程,避免过拟合。在训练过程中的验证步骤中,引入了一种新的学习率调整方法来帮助训练网络的最佳模型。结果表明,与DnCNN的基线相比,调整后的网络具有更好的性能。
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