论文标题
身份增强的残留图像denoising
Identity Enhanced Residual Image Denoising
论文作者
论文摘要
我们建议学习一个完全跨跨的网络模型,该模型由一系列身份映射模块和残差架构上的残差组成。我们的网络结构具有三个独特的功能,这些功能对于删除噪声任务很重要。首先,每个单元都采用身份映射作为跳过连接并接收预激活的输入,以保留向前和向后方向传播的梯度幅度。其次,通过利用扩张的核作为残留分支中的卷积层,每个模块最后一个卷积层中的每个神经元可以观察到第一层的完整接受场。最后,我们采用残差架构上的残留物来简化高级信息的传播。与当前最新的真实denoising网络相反,我们还提供了一个直接且单阶段的网络,用于真实的图像denoising。在三个常规基准和三个现实世界数据集上评估时,提出的网络与经典的最先进和CNN算法相比,与经典的最先进和CNN算法相比,该网络的数值准确性和更好的视觉图像质量更高。
We propose to learn a fully-convolutional network model that consists of a Chain of Identity Mapping Modules and residual on the residual architecture for image denoising. Our network structure possesses three distinctive features that are important for the noise removal task. Firstly, each unit employs identity mappings as the skip connections and receives pre-activated input to preserve the gradient magnitude propagated in both the forward and backward directions. Secondly, by utilizing dilated kernels for the convolution layers in the residual branch, each neuron in the last convolution layer of each module can observe the full receptive field of the first layer. Lastly, we employ the residual on the residual architecture to ease the propagation of the high-level information. Contrary to current state-of-the-art real denoising networks, we also present a straightforward and single-stage network for real image denoising. The proposed network produces remarkably higher numerical accuracy and better visual image quality than the classical state-of-the-art and CNN algorithms when being evaluated on the three conventional benchmark and three real-world datasets.