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Learning Method of Generative Adversarial Network with Multiple Generators for Image Denoising

机译:图像去噪的多发生器生成对抗网络学习方法

摘要

The present invention relates to a learning method of generative adversarial network (GAN) with multiple generators for image denoising, and provides a generative adversarial network with three generators. Such generators are used for removing Poisson noise, Gaussian blur noise and distortion noise respectively to improve the quality of low-dose CT (LDCT) images; the generators adopt the residual network structure. The mapped short connection used in the residual network can avoid the vanishing gradient problem in a deep neural network and accelerate the network training; the training of GAN is always a difficult problem due to the unreasonable measure between the generative distribution and real distribution. The present invention can stabilize training and enhance the robustness of training models by limiting the spectral norm of a weight matrix.
机译:本发明涉及一种用于图像去噪的具有多个生成器的生成性对抗网络(GAN)的学习方法,并提供了一种具有三个生成器的生成性对抗网络。该发生器分别用于去除泊松噪声、高斯模糊噪声和畸变噪声,以提高低剂量CT(LDCT)图像的质量;发电机采用剩余网络结构。残差网络中的映射短连接可以避免深层神经网络中的消失梯度问题,加快网络训练速度;由于在生成分配和真实分配之间采取了不合理的措施,GAN的训练一直是一个难题。本发明可以通过限制权重矩阵的谱范数来稳定训练并增强训练模型的鲁棒性。

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