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Image Denoising Networks with Residual Blocks and RReLUs

机译:与残余块和Rrelus的图像去噪网络

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摘要

Discriminative learning methods have been widely studied in image denoising due to their swift inference and favorable performance. Nonetheless, their application range is greatly restricted by the specialized task (i.e., a specific model is required for each considered noise level), which prompts us to train a single network to tackle the blind image denoising problem. To this end, we take the advantages of state-of-the-art progress in deep learning to construct our denoising networks. Particularly, residual learning is utilized in our deep CNNs (convolutional neural networks) with pre-activation strategy to accelerate the training process. Furthermore, we employ RReLU (randomized leaky rectified linear unit) as the activation rather than the conventional use of ReLU (rectified linear unit). Extensive experiments are conducted to demonstrate that our model enjoys two desirable properties, including: (1) the ability to yield competitive denoising quality in comparison to specifically trained denoisers in several predetermined noise level and (2) the ability to handle a wide scope of noise levels effectively with a single network. The experimental results reveal its efficiency and effectiveness for image denoising tasks.
机译:判别学习方法已被广泛研究在图像去噪由于其迅速推断和良好的性能。然而,它们的应用范围大大由专门任务(即,需要对每个考虑噪声电平一个特定的模型),我们培养了单个网络,其提示解决盲图像去噪问题的限制。为此,我们采取的国家的最先进的进展优势,深度学习来构建我们的去噪网络。特别是,剩余学习利用我们深厚细胞神经网络(卷积神经网络)与预激活战略,加快训练过程。此外,我们采用RReLU(随机漏泄整流线性单位)作为活化而不是传统的使用RELU的(整流线性单位)。广泛实验以证明我们的模型享有2种期望的性质,包括:(1)以产生有竞争力的去噪质量相比,专门训练denoisers在几个预定的噪声水平的能力和(2)来处理噪声的宽范围的能力有效地与一个单一的网络水平。实验结果表明其对图像进行去噪任务的效率和效益。

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