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Multiscale parallel feature extraction convolution neural network for image denoising

机译:多尺度并行特征提取卷积神经网络去噪

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Image denoising based on a convolution neural network (CNN) can be described as the problem of learning a mapping function from a noisy image to a clean image through an end-to-end training. We propose a multiscale parallel feature extraction module (MPFE) for CNN denoising, which integrates residual learning and dense connection. The MPFE uses convolution kernels of different sizes to adaptively extract multiple features in different scales from the input image. We introduce dense connection to connect each MPFE, which can make different features interact with each other and concatenate together, so as to fully exploit the image features. The dense connection can pass the features that carry many image details, which help reduce image distortion. Meanwhile, it can also reduce gradient disappearance and improve convergence speed. The MPFE uses residual learning to resolve the gradient loss caused by high network depth while still ensuring that the network learns the details of the noisy image. Simulation experiments show that our denoising method has the ability of suppressing Gaussian noises with different noise levels, it performs superior performance over the state-of-the-art denoising methods. (C) 2018 SPIE and IS&T
机译:基于卷积神经网络(CNN)的图像去噪可以描述为通过端到端训练从噪声图像到清晰图像学习映射函数的问题。我们提出了一种用于CNN去噪的多尺度并行特征提取模块(MPFE),该模块集成了残差学习和密集连接。 MPFE使用不同大小的卷积核从输入图像中自适应提取不同比例的多个特征。我们引入密集连接来连接每个MPFE,这可以使不同的功能相互交互并连接在一起,从而充分利用图像功能。密集连接可以通过承载许多图像细节的功能,从而有助于减少图像失真。同时,它还可以减少梯度消失并提高收敛速度。 MPFE使用残差学习来解决由高网络深度引起的梯度损失,同时仍确保网络获悉有噪图像的细节。仿真实验表明,我们的降噪方法具有抑制不同噪声水平的高斯噪声的能力,其性能优于最新的降噪方法。 (C)2018 SPIE和IS&T

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