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Denoising convolutional neural network inspired via multi-layer convolutional sparse coding

机译:去噪通过多层卷积稀疏编码启发的卷积神经网络

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摘要

Sparse prior to image denoising is a classical research field with a long history in computer vision. We propose an end-to-end supervised neural network, named DnMLCSC-net, which is inspired via multi-layer convolutional sparse coding model embedded with symbiotic analysis-synthesis priors for natural image denoising. Unfolding a multi-layer, learned iterative soft thresholding algorithm (ML-LISTA) and developing into a convolutional recurrent neural network, all parameters in the model are updated adaptively to minimize mixed loss via gradient descent using backpropagation. In addition, a combined ReLU function is taken as the activation function. Inconsistent dilated convolution and batch normalization were empirically introduced into the encoding layers corresponding to the first iteration of ML-LISTA. Experimental results show that our network achieves a competitive denoising effect in comparison with several state-of-the-art denoising methods. (C) 2021 SPIE and IS&T
机译:图像去噪前的稀疏是一种古典研究领域,在计算机视觉中具有悠久的历史。 我们提出了一个名为DNMLCSC-NET的端到端监督神经网络,该网络是通过嵌入的多层卷积稀疏编码模型的启发,嵌入有共生分析合成前沿的自然图像去噪。 展开多层,学习迭代软阈值算法(ML-Lista)并开发成卷积复发性神经网络,模型中的所有参数都是自适应更新的,以通过使用BackPropagation通过梯度下降最小化混合损失。 此外,组合的Relu功能被视为激活功能。 经验被验证将扩张的卷积和批量标准化被凭经上引入与ML-Lista的第一迭代相对应的编码层。 实验结果表明,与多种最先进的去噪方法相比,我们的网络达到了竞争性去噪效果。 (c)2021个SPIE和IS&T

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