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DN-ResNet: Efficient Deep Residual Network for Image Denoising

机译:DN-ResNet:用于图像降噪的高效深度残留网络

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A deep learning approach to blind denoising of images without complete knowledge of the noise statistics is considered. We propose DN-ResNet, which is a deep convolutional neural network (CNN) consisting of several residual blocks (ResBlocks). With cascade training, DN-ResNet is more accurate and more computationally efficient than the state of art denoising networks. An edge-aware loss function is further utilized in training DN-ResNet, so that the denoising results have better perceptive quality compared to conventional loss function. Next, we introduce the depthwise separable DN-ResNet (DS-DN-ResNet) utilizing the proposed Depthwise Seperable ResBlock (DS-ResBlock) instead of standard ResBlock, which has much less computational cost. We propose cascade evolution of DS-DN-ResNet from DN-ResNet by incrementally transforming the ResBlocks to DS-ResBlocks, while building on the previous training. As a result, high accuracy and good computational efficiency are achieved concurrently. Whereas previous state of art deep learning methods focused on denoising either Gaussian or Poisson corrupted images, we consider denoising images having the more practical Poisson with additive Gaussian noise as well. The results show that DN-ResNets are more efficient, robust, and perform better denoising than current state of art deep learning methods, as well as the popular variants of the BM3D algorithm, in cases of blind and non-blind denoising of images corrupted with Poisson, Gaussian or Poisson-Gaussian noise. Our network also works well for other image enhancement task such as compressed image restoration.
机译:考虑了一种在不完全了解噪声统计信息的情况下对图像进行盲降噪的深度学习方法。我们提出了DN-ResNet,这是一个深卷积神经网络(CNN),由几个残差块(ResBlocks)组成。通过级联训练,DN-ResNet比最新的去噪网络更准确,计算效率更高。在训练DN-ResNet时进一步利用了边缘感知损失函数,因此与传统的损失函数相比,去噪结果具有更好的感知质量。接下来,我们利用提议的深度可分离ResBlock(DS-ResBlock)代替标准ResBlock来介绍深度可分离DN-ResNet(DS-DN-ResNet),它的计算成本要低得多。我们建议在先前培训的基础上,通过将ResBlocks逐步转换为DS-ResBlocks,从DN-ResNet级联发展DS-DN-ResNet。结果,同时实现了高精度和良好的计算效率。鉴于现有技术的深度学习方法专注于对高斯或Poisson损坏的图像进行降噪,但我们认为对具有更实际的Poisson的图像进行降噪也具有加性高斯噪声。结果表明,在被图像破坏的图像进行盲目和非盲目去噪的情况下,DN-ResNets比当前最先进的深度学习方法以及BM3D算法的流行变体更高效,更鲁棒,并且去噪效果更好。泊松,高斯或泊松-高斯噪声。我们的网络还可以很好地用于其他图像增强任务,例如压缩图像恢复。

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