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Improving deep image denoising using pseudo-ground-truth images

机译:使用伪地面真像改善深度图像去噪

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摘要

Deep neural networks, especially convolutional neural networks, have been successfully applied to image denoising tasks. Along with advances in network architectures, many attempts have been made to find an alternative loss function to the widely used L1-loss and L2-loss. However, the perception-distortion tradeoff was recently demonstrated; thus, advanced loss functions such as adversarial loss from generative adversarial networks can only improve the perceptual image quality at the expense of distortion. This Letter shows that distortion can be further decreased when an image denoising network is trained using modified versions of ground-truth (GT) (defined as pseudo-ground-truth (PGT)) images that are obtained by combining the original GT images and initially denoised images. Experimental results show that the proposed denoising network that is trained to predict both PGT and GT images produces denoised images closer to GT images.
机译:深度神经网络,尤其是卷积神经网络已成功应用于图像去噪任务。随着网络体系结构的进步,人们进行了许多尝试来寻找广泛使用的L1损耗和L2损耗的替代损耗函数。但是,最近出现了感知失真的折衷。因此,先进的损失函数(例如来自生成对抗网络的对抗损失)只能以失真为代价提高感知图像质量。这封信表明,当使用经过修改的地面真实(GT)图像(定义为伪地面真实(PGT))图像训练降噪网络时,可以进一步降低失真,该图像是通过合并原始GT图像和初始获得的去噪图像。实验结果表明,所提出的去噪网络经过训练可以预测PGT和GT图像,它们产生的去噪图像更接近GT图像。

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